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Efficient multilevel successive elimination algorithms for block matching motion estimation

机译:用于块匹配运动估计的高效多级连续消除算法

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The authors present fast algorithms to reduce the computations of block matching algorithms, for motion estimation in video coding. Efficient multilevel successive elimination algorithms are based on the multilevel successive elimination. Efficient multilevel successive climination algorithms consist of four algrithms. The first algorithm is given by the sum of absolute difference between the sum norms of sub-blocks in a multilevel successive elimination algorithm (MSEA) using the partial distortion elimination technique. By using the first algorithm, computations of MSEA can be reduced further. In the second algorithm, the sum of absolute difference (SAD) is calculated adaptively from large value to small value according to the absolute difference values between pixels of blocks. By using the second algorithm, the partial distortion elimination in the SAD calculation can occur early, therefore the computations of MSEA can be reduced. The second algorithm is useful not only with MSEA, but also with all kinds of block matching algorithms. In the third algorithm, the elimination level of the MSEA can be estimated. Accordingly, the computations of the MSEA related to the level lower than the estimated level can be reduced. The fourth algorithm is, first of all, to search the motion vector over the half sampled search points. At the second search, the authors search the unsampled search points around the tested search points where the motion vector may exist from the first search results. The motion estimation accuracy of the fourth algorithm is nearly 100% and the computations can be greatly reduced.
机译:作者提出了用于减少块匹配算法的计算的快速算法,用于视频编码中的运动估计。高效的多级连续消除算法基于多级连续消除。高效的多级连续消除算法由四个算法组成。第一种算法由使用部分失真消除技术的多级连续消除算法(MSEA)中子块总和范数之间的绝对差之和给出。通过使用第一种算法,可以进一步减少MSEA的计算。在第二算法中,根据块的像素之间的绝对差值自适应地从大值到小值计算绝对差之和(SAD)。通过使用第二种算法,可以较早地进行SAD计算中的部分失真消除,因此可以减少MSEA的计算。第二种算法不仅适用于MSEA,而且适用于所有类型的块匹配算法。在第三种算法中,可以估计出MSEA的消除水平。因此,可以减少与低于估计水平的水平有关的MSEA的计算。第四算法首先是在一半采样的搜索点上搜索运动矢量。在第二次搜索时,作者从第一次搜索结果中搜索可能存在运动矢量的测试搜索点周围的未采样搜索点。第四种算法的运动估计精度接近100%,可以大大减少计算量。

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