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d6d9fc60e1
Create a brotli_bit_stream library that is responsible for writing various structures (headers, Huffman codes, etc.) directly into the bit-stream.
496 lines
14 KiB
C++
496 lines
14 KiB
C++
// Copyright 2010 Google Inc. All Rights Reserved.
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//
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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//
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// http://www.apache.org/licenses/LICENSE-2.0
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//
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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//
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// Entropy encoding (Huffman) utilities.
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#include "./entropy_encode.h"
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#include <stdint.h>
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#include <algorithm>
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#include <limits>
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#include <vector>
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#include <cstdlib>
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#include "./histogram.h"
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namespace brotli {
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namespace {
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struct HuffmanTree {
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HuffmanTree();
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HuffmanTree(int count, int16_t left, int16_t right)
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: total_count_(count),
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index_left_(left),
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index_right_or_value_(right) {
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}
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int total_count_;
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int16_t index_left_;
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int16_t index_right_or_value_;
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};
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HuffmanTree::HuffmanTree() {}
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// Sort the root nodes, least popular first, break ties by value.
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bool SortHuffmanTree(const HuffmanTree &v0, const HuffmanTree &v1) {
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if (v0.total_count_ == v1.total_count_) {
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return v0.index_right_or_value_ > v1.index_right_or_value_;
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}
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return v0.total_count_ < v1.total_count_;
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}
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// Sort the root nodes, least popular first.
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bool SortHuffmanTreeFast(const HuffmanTree &v0, const HuffmanTree &v1) {
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return v0.total_count_ < v1.total_count_;
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}
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void SetDepth(const HuffmanTree &p,
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HuffmanTree *pool,
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uint8_t *depth,
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int level) {
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if (p.index_left_ >= 0) {
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++level;
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SetDepth(pool[p.index_left_], pool, depth, level);
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SetDepth(pool[p.index_right_or_value_], pool, depth, level);
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} else {
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depth[p.index_right_or_value_] = level;
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}
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}
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} // namespace
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// This function will create a Huffman tree.
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//
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// The catch here is that the tree cannot be arbitrarily deep.
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// Brotli specifies a maximum depth of 15 bits for "code trees"
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// and 7 bits for "code length code trees."
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//
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// count_limit is the value that is to be faked as the minimum value
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// and this minimum value is raised until the tree matches the
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// maximum length requirement.
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//
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// This algorithm is not of excellent performance for very long data blocks,
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// especially when population counts are longer than 2**tree_limit, but
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// we are not planning to use this with extremely long blocks.
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//
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// See http://en.wikipedia.org/wiki/Huffman_coding
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void CreateHuffmanTree(const int *data,
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const int length,
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const int tree_limit,
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const int quality,
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uint8_t *depth) {
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// For block sizes below 64 kB, we never need to do a second iteration
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// of this loop. Probably all of our block sizes will be smaller than
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// that, so this loop is mostly of academic interest. If we actually
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// would need this, we would be better off with the Katajainen algorithm.
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for (int count_limit = 1; ; count_limit *= 2) {
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std::vector<HuffmanTree> tree;
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tree.reserve(2 * length + 1);
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for (int i = 0; i < length; ++i) {
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if (data[i]) {
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const int count = std::max(data[i], count_limit);
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tree.push_back(HuffmanTree(count, -1, i));
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}
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}
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const int n = tree.size();
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if (n == 1) {
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depth[tree[0].index_right_or_value_] = 1; // Only one element.
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break;
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}
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if (quality > 1) {
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std::sort(tree.begin(), tree.end(), SortHuffmanTree);
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} else {
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std::sort(tree.begin(), tree.end(), SortHuffmanTreeFast);
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}
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// The nodes are:
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// [0, n): the sorted leaf nodes that we start with.
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// [n]: we add a sentinel here.
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// [n + 1, 2n): new parent nodes are added here, starting from
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// (n+1). These are naturally in ascending order.
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// [2n]: we add a sentinel at the end as well.
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// There will be (2n+1) elements at the end.
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const HuffmanTree sentinel(std::numeric_limits<int>::max(), -1, -1);
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tree.push_back(sentinel);
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tree.push_back(sentinel);
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int i = 0; // Points to the next leaf node.
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int j = n + 1; // Points to the next non-leaf node.
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for (int k = n - 1; k > 0; --k) {
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int left, right;
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if (tree[i].total_count_ <= tree[j].total_count_) {
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left = i;
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++i;
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} else {
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left = j;
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++j;
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}
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if (tree[i].total_count_ <= tree[j].total_count_) {
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right = i;
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++i;
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} else {
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right = j;
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++j;
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}
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// The sentinel node becomes the parent node.
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int j_end = tree.size() - 1;
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tree[j_end].total_count_ =
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tree[left].total_count_ + tree[right].total_count_;
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tree[j_end].index_left_ = left;
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tree[j_end].index_right_or_value_ = right;
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// Add back the last sentinel node.
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tree.push_back(sentinel);
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}
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SetDepth(tree[2 * n - 1], &tree[0], depth, 0);
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// We need to pack the Huffman tree in tree_limit bits.
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// If this was not successful, add fake entities to the lowest values
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// and retry.
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if (*std::max_element(&depth[0], &depth[length]) <= tree_limit) {
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break;
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}
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}
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}
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void Reverse(std::vector<uint8_t>* v, int start, int end) {
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--end;
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while (start < end) {
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int tmp = (*v)[start];
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(*v)[start] = (*v)[end];
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(*v)[end] = tmp;
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++start;
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--end;
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}
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}
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void WriteHuffmanTreeRepetitions(
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const int previous_value,
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const int value,
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int repetitions,
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std::vector<uint8_t> *tree,
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std::vector<uint8_t> *extra_bits_data) {
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if (previous_value != value) {
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tree->push_back(value);
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extra_bits_data->push_back(0);
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--repetitions;
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}
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if (repetitions == 7) {
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tree->push_back(value);
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extra_bits_data->push_back(0);
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--repetitions;
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}
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if (repetitions < 3) {
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for (int i = 0; i < repetitions; ++i) {
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tree->push_back(value);
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extra_bits_data->push_back(0);
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}
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} else {
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repetitions -= 3;
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int start = tree->size();
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while (repetitions >= 0) {
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tree->push_back(16);
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extra_bits_data->push_back(repetitions & 0x3);
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repetitions >>= 2;
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--repetitions;
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}
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Reverse(tree, start, tree->size());
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Reverse(extra_bits_data, start, tree->size());
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}
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}
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void WriteHuffmanTreeRepetitionsZeros(
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int repetitions,
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std::vector<uint8_t> *tree,
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std::vector<uint8_t> *extra_bits_data) {
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if (repetitions == 11) {
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tree->push_back(0);
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extra_bits_data->push_back(0);
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--repetitions;
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}
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if (repetitions < 3) {
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for (int i = 0; i < repetitions; ++i) {
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tree->push_back(0);
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extra_bits_data->push_back(0);
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}
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} else {
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repetitions -= 3;
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int start = tree->size();
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while (repetitions >= 0) {
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tree->push_back(17);
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extra_bits_data->push_back(repetitions & 0x7);
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repetitions >>= 3;
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--repetitions;
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}
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Reverse(tree, start, tree->size());
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Reverse(extra_bits_data, start, tree->size());
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}
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}
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int OptimizeHuffmanCountsForRle(int length, int* counts) {
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int stride;
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int limit;
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int sum;
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uint8_t* good_for_rle;
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// Let's make the Huffman code more compatible with rle encoding.
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int i;
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for (; length >= 0; --length) {
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if (length == 0) {
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return 1; // All zeros.
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}
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if (counts[length - 1] != 0) {
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// Now counts[0..length - 1] does not have trailing zeros.
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break;
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}
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}
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{
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int nonzeros = 0;
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int smallest_nonzero = 1 << 30;
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for (i = 0; i < length; ++i) {
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if (counts[i] != 0) {
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++nonzeros;
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if (smallest_nonzero > counts[i]) {
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smallest_nonzero = counts[i];
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}
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}
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}
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if (nonzeros < 5) {
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// Small histogram will model it well.
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return 1;
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}
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int zeros = length - nonzeros;
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if (smallest_nonzero < 4) {
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if (zeros < 6) {
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for (i = 1; i < length - 1; ++i) {
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if (counts[i - 1] != 0 && counts[i] == 0 && counts[i + 1] != 0) {
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counts[i] = 1;
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}
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}
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}
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}
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if (nonzeros < 28) {
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return 1;
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}
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}
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// 2) Let's mark all population counts that already can be encoded
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// with an rle code.
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good_for_rle = (uint8_t*)calloc(length, 1);
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if (good_for_rle == NULL) {
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return 0;
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}
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{
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// Let's not spoil any of the existing good rle codes.
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// Mark any seq of 0's that is longer as 5 as a good_for_rle.
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// Mark any seq of non-0's that is longer as 7 as a good_for_rle.
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int symbol = counts[0];
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int stride = 0;
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for (i = 0; i < length + 1; ++i) {
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if (i == length || counts[i] != symbol) {
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if ((symbol == 0 && stride >= 5) ||
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(symbol != 0 && stride >= 7)) {
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int k;
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for (k = 0; k < stride; ++k) {
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good_for_rle[i - k - 1] = 1;
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}
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}
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stride = 1;
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if (i != length) {
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symbol = counts[i];
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}
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} else {
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++stride;
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}
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}
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}
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// 3) Let's replace those population counts that lead to more rle codes.
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// Math here is in 24.8 fixed point representation.
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const int streak_limit = 1240;
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stride = 0;
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limit = 256 * (counts[0] + counts[1] + counts[2]) / 3 + 420;
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sum = 0;
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for (i = 0; i < length + 1; ++i) {
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if (i == length || good_for_rle[i] ||
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(i != 0 && good_for_rle[i - 1]) ||
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abs(256 * counts[i] - limit) >= streak_limit) {
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if (stride >= 4 || (stride >= 3 && sum == 0)) {
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int k;
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// The stride must end, collapse what we have, if we have enough (4).
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int count = (sum + stride / 2) / stride;
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if (count < 1) {
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count = 1;
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}
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if (sum == 0) {
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// Don't make an all zeros stride to be upgraded to ones.
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count = 0;
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}
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for (k = 0; k < stride; ++k) {
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// We don't want to change value at counts[i],
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// that is already belonging to the next stride. Thus - 1.
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counts[i - k - 1] = count;
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}
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}
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stride = 0;
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sum = 0;
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if (i < length - 2) {
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// All interesting strides have a count of at least 4,
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// at least when non-zeros.
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limit = 256 * (counts[i] + counts[i + 1] + counts[i + 2]) / 3 + 420;
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} else if (i < length) {
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limit = 256 * counts[i];
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} else {
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limit = 0;
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}
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}
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++stride;
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if (i != length) {
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sum += counts[i];
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if (stride >= 4) {
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limit = (256 * sum + stride / 2) / stride;
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}
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if (stride == 4) {
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limit += 120;
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}
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}
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}
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free(good_for_rle);
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return 1;
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}
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static void DecideOverRleUse(const uint8_t* depth, const int length,
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bool *use_rle_for_non_zero,
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bool *use_rle_for_zero) {
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int total_reps_zero = 0;
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int total_reps_non_zero = 0;
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int count_reps_zero = 0;
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int count_reps_non_zero = 0;
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for (uint32_t i = 0; i < length;) {
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const int value = depth[i];
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int reps = 1;
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for (uint32_t k = i + 1; k < length && depth[k] == value; ++k) {
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++reps;
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}
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if (reps >= 3 && value == 0) {
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total_reps_zero += reps;
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++count_reps_zero;
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}
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if (reps >= 4 && value != 0) {
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total_reps_non_zero += reps;
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++count_reps_non_zero;
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}
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i += reps;
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}
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total_reps_non_zero -= count_reps_non_zero * 2;
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total_reps_zero -= count_reps_zero * 2;
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*use_rle_for_non_zero = total_reps_non_zero > 2;
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*use_rle_for_zero = total_reps_zero > 2;
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}
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void WriteHuffmanTree(const uint8_t* depth,
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uint32_t length,
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std::vector<uint8_t> *tree,
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std::vector<uint8_t> *extra_bits_data) {
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int previous_value = 8;
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// Throw away trailing zeros.
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int new_length = length;
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for (int i = 0; i < length; ++i) {
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if (depth[length - i - 1] == 0) {
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--new_length;
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} else {
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break;
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}
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}
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// First gather statistics on if it is a good idea to do rle.
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bool use_rle_for_non_zero = false;
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bool use_rle_for_zero = false;
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if (length > 50) {
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// Find rle coding for longer codes.
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// Shorter codes seem not to benefit from rle.
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DecideOverRleUse(depth, new_length,
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&use_rle_for_non_zero, &use_rle_for_zero);
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}
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// Actual rle coding.
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for (uint32_t i = 0; i < new_length;) {
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const int value = depth[i];
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int reps = 1;
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if ((value != 0 && use_rle_for_non_zero) ||
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(value == 0 && use_rle_for_zero)) {
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for (uint32_t k = i + 1; k < new_length && depth[k] == value; ++k) {
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++reps;
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}
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}
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if (value == 0) {
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WriteHuffmanTreeRepetitionsZeros(reps, tree, extra_bits_data);
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} else {
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WriteHuffmanTreeRepetitions(previous_value,
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value, reps, tree, extra_bits_data);
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previous_value = value;
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}
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i += reps;
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}
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}
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namespace {
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uint16_t ReverseBits(int num_bits, uint16_t bits) {
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static const size_t kLut[16] = { // Pre-reversed 4-bit values.
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0x0, 0x8, 0x4, 0xc, 0x2, 0xa, 0x6, 0xe,
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0x1, 0x9, 0x5, 0xd, 0x3, 0xb, 0x7, 0xf
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};
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size_t retval = kLut[bits & 0xf];
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for (int i = 4; i < num_bits; i += 4) {
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retval <<= 4;
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bits >>= 4;
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retval |= kLut[bits & 0xf];
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}
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retval >>= (-num_bits & 0x3);
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return retval;
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}
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} // namespace
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void ConvertBitDepthsToSymbols(const uint8_t *depth, int len, uint16_t *bits) {
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// In Brotli, all bit depths are [1..15]
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// 0 bit depth means that the symbol does not exist.
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const int kMaxBits = 16; // 0..15 are values for bits
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uint16_t bl_count[kMaxBits] = { 0 };
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{
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for (int i = 0; i < len; ++i) {
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++bl_count[depth[i]];
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}
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bl_count[0] = 0;
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}
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uint16_t next_code[kMaxBits];
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next_code[0] = 0;
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{
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int code = 0;
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for (int bits = 1; bits < kMaxBits; ++bits) {
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code = (code + bl_count[bits - 1]) << 1;
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next_code[bits] = code;
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}
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}
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for (int i = 0; i < len; ++i) {
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if (depth[i]) {
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bits[i] = ReverseBits(depth[i], next_code[depth[i]]++);
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}
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}
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}
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} // namespace brotli
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