H.264/AVC^1的快速自适应统计遗传运动搜索算法

Tian Xu, Weidong Chen
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引用次数: 3

摘要

在H.264中,运动估计算法在计算成本和编码效率方面起着重要的作用。提出了一种基于H.264/AVC的快速自适应统计遗传运动搜索算法。在我们的算法中,我们首先根据不同块大小的预定阈值对平稳块进行估计,从而提前终止。在时空预测方案的基础上,选择合适的起始点以获得较好的收敛速度。为了适应快速运动和慢速运动,基于运动矢量的统计分布,利用搜索范围和方向信息,设计了一种突变机制。实验数据表明,与全搜索算法相比,该算法的平均加速提升率为29.3,平均PSNR损失为0.071 dB,可以忽略不计,平均比特率提高了3.43%。与轻量级遗传搜索算法(LGSA)相比[9],我们的算法平均加速7.92,PSNR增益0.01 dB,比特率平均降低14.96%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast Adaptive Statistical Genetic Motion Search Algorithm for H.264/AVC^1
In H.264, motion estimation algorithm plays a significant role in computational cost and coding efficiency. In this paper, we proposed a novel fast adaptive statistical genetic motion search algorithm for H.264/AVC.In our algorithm, we first make an early termination based on the estimation of stationary blocks by the predetermined thresholds with different block sizes. Based on the spatiotemporal predictive scheme, some starting points are well chosen to obtain good convergence rate. To adapt to fast motion and slow motion, a mutation mechanism is designed by exploiting the information of search range and direction based on the statistical distribution of motion vectors. Experimental data show that our proposed algorithm can achieve average speedup 29.3 with negligible average PSNR loss of 0.071 dB and average bit rate increase of 3.43% compared with full search algorithm. Compared with lightweight genetic search algorithm (LGSA) [9], our algorithm achieves speedup 7.92, PSNR gain 0.01 dB and bit rate decrease 14.96% averagely
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