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On fast and accurate block-based motion estimation algorithms using particle swarm optimization

机译:基于粒子群算法的快速准确的基于块的运动估计算法

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摘要

Both fast and accurate block-matching algorithms are critical to efficient compression of video frames using motion estimation and compensation. While the particle swarm optimization approach holds the promise of alleviating the local optima problem suffered typically by existing very fast block matching methods, motion estimation algorithms based on particle swarm optimization in the literature appear to be either much slower than some leading fast block-matching methods for a given accuracy of motion estimation, or less accurate for a given computational complexity. In this paper, we show that the conventional particle swarm optimization approach, which was originally designed to solve general optimization problems where fast convergence of the algorithm might not be a primary concern, could be modified appropriately so that it could provide accurate motion estimation with very low computational cost in the specific context of video motion estimation. To this end, we proposed a new block matching algorithm based on a set of strategies adapted from the standard particle swarm optimization approach. Extensive simulations showed that the proposed method could achieve significant improvements over leading fast block matching methods including the diamond search and the cross-diamond search methods, in terms of both estimation accuracy and computational cost. In particular, the proposed method based on particle swarm optimization is not only much faster, but also remarkably more accurate (about 2 dB higher in terms of the Peak Signal-to-Noise-Ratio) than the competing methods on video sequences with large motion.
机译:快速和准确的块匹配算法对于使用运动估计和补偿有效压缩视频帧都是至关重要的。尽管粒子群优化方法有望缓解现有的非常快的块匹配方法通常会遇到的局部最优问题,但文献中基于粒子群优化的运动估计算法似乎比某些领先的快速块匹配方法要慢得多对于给定的运动估计精度,或者对于给定的计算复杂度,精度较低。在本文中,我们表明可以适当地修改传统的粒子群优化方法,该方法最初旨在解决一般的优化问题,在这些问题中,算法的快速收敛可能不是主要问题。在视频运动估计的特定上下文中计算成本低。为此,我们基于基于标准粒子群优化方法的一组策略,提出了一种新的块匹配算法。大量的仿真表明,该方法相对于包括钻石搜索和交叉钻石搜索方法在内的领先的快速块匹配方法,无论是在估计精度还是在计算成本上都可以取得显着改进。特别地,与大运动视频序列上的竞争方法相比,所提出的基于粒子群优化的方法不仅速度更快,而且准确性更高(就峰值信噪比而言约高2 dB)。 。

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