A novel parallel motion estimation algorithm based on Particle Swarm Optimization

Manal Jalloul, M. A. Al-Alaoui
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引用次数: 10

Abstract

Motion estimation is a common tool used in all video coding standards. Fast and accurate algorithms are needed to target the real-time processing requirements of emerging applications. Many fast-search block motion estimation algorithms have been developed to reduce the computational cost required by the full-search algorithm. These techniques however often converge to a local minimum, which makes them subject to noise and matching errors. In the literature, several schemes were proposed to employ strategies of Particle Swarm Optimization (PSO) in the problem of motion estimation since PSO promises to alleviate the problem of being trapped in local minima. The existing schemes, however, still don't achieve the necessary improvement in terms of accuracy or speedup as compared to the existing fast searching methods. In this paper, we propose a novel fast and accurate block motion estimation scheme based on an improved parallel Particle Swarm Optimization algorithm. Unlike existing motion estimation algorithms which operate on blocks of the frame serially following the raster order, the proposed algorithm achieves parallelism since it performs motion estimation for all blocks of the frame in parallel. Simulation results showed that the proposed scheme could provide a higher accuracy and a remarkable speedup as compared to the well-known fast searching techniques and to a recent PSO-based motion estimation algorithm.
一种新的基于粒子群优化的并行运动估计算法
运动估计是所有视频编码标准中常用的一种工具。为了满足新兴应用的实时处理需求,需要快速准确的算法。为了降低全搜索算法的计算量,人们开发了许多快速搜索块运动估计算法。然而,这些技术往往收敛到局部最小值,这使得它们容易受到噪声和匹配误差的影响。在文献中,由于粒子群优化(PSO)有望缓解陷入局部极小值的问题,因此提出了几种将粒子群优化(PSO)策略应用于运动估计问题的方案。然而,与现有的快速搜索方法相比,现有的方案在准确性和加速方面仍然没有达到必要的改进。本文提出了一种基于改进并行粒子群算法的快速准确块运动估计方法。不同于现有的运动估计算法是按照栅格顺序对帧块进行连续的运动估计,该算法实现了并行性,因为它对帧的所有块并行进行运动估计。仿真结果表明,与现有的快速搜索技术和基于粒子群的运动估计算法相比,该算法具有更高的搜索精度和显著的速度提升。
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