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A new block matching algorithm based on stochastic fractal search

机译:一种基于随机分数次搜索的新块匹配算法

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摘要

Block matching algorithm is the most popular motion estimation technique, due to its simplicity of implementation and effectiveness. However, the algorithm suffers from a long computation time which affects its general performance. In order to achieve faster motion estimation, a new block matching algorithm based on stochastic fractal search, SFS, is proposed in this paper. SFS is a metaheuristic technique used to solve hard optimization problems in minimal time. In this work, two main contributions are presented. The first one consists of computing the motion vectors in a parallel structure as opposed to the other hierarchical metaheuristic block matching algorithms. When the video sequence frame is divided into blocks, a multi-population model of SFS is used to estimate the motion vectors of all blocks simultaneously. As a second contribution, the proposed algorithm is modified in order to enhance the results. In this modified version, four ideas are investigated. The random initialization, usually used in metaheuristics, is replaced by a fixed pattern. The initialized solutions are evaluated using a new fitness function that combines two matching criteria. The considered search space is controlled by a new adaptive window size strategy. A modified version of the fitness approximation method, which is known to reduce computation time but causes some degradation in the estimation accuracy, is proposed to balance between computation time and estimation accuracy. These ideas are evaluated in nine video sequences and the percentage improvement of each idea, in terms of estimation accuracy and computational complexity, is reported. The presented algorithms are then compared with other well-known block matching algorithms. The experimental results indicate that the proposed ideas improve the block matching performance, and show that the proposed algorithm outperforms many state-of-the-art methods.
机译:块匹配算法是最流行的运动估计技术,因为其实现和有效性的简单性。然而,该算法遭受了影响其一般性能的长计算时间。为了实现更快的运动估计,本文提出了一种基于随机分数态搜索的新的块匹配算法,SFS。 SFS是一种用于解决最小时间内的难度优化问题的成群质培养技术。在这项工作中,提出了两个主要贡献。第一人包括计算并行结构中的运动矢量,而不是另一个分层成群型块匹配算法。当视频序列帧被划分为块时,使用多群SFS模型同时估计所有块的运动向量。作为第二贡献,修改了所提出的算法以增强结果。在这个修改的版本中,调查了四种想法。通常用于成型测验的随机初始化由固定模式替换。使用结合两个匹配标准的新健身功能来评估初始化的解决方案。所考虑的搜索空间由新的自适应窗口大小策略控制。建议在计算时间和估计准确度之间平衡来降低计算时间但在估计精度下降低劣化的适应性近似方法的修改版本。报告了这些思路在九个视频序列中评估,并且在估计准确度和计算复杂性方面,每个想法的改善率为百分比。然后将所提出的算法与其他众所周知的块匹配算法进行比较。实验结果表明,所提出的思想改善了块匹配性能,并表明所提出的算法优于许多最先进的方法。

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