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一种复杂度受限的运动估计算法。

A complexity-bounded motion estimation algorithm.

作者信息

Chimienti Antonio, Ferraris Claudia, Pau Danilo

机构信息

Res. Inst. for Inf. and Telecommun. Eng., Nat. Res. Council (IRITI-CNR), Torino.

出版信息

IEEE Trans Image Process. 2002;11(4):387-92. doi: 10.1109/TIP.2002.999673.

Abstract

The full search motion estimation algorithm for video coding is a procedure of high computational cost. For this reason, in real-time low-power applications, low-cost motion estimation algorithms are viable solutions. A novel reduced complexity motion estimation algorithm is presented. It conjugates the reduction of computational load with good encoding efficiency. It exploits the past history of the motion field to predict the current motion field. A successive refinement phase gives the final motion field. This approach leads to a sensible reduction in the number of motion vector that have to be tested. The complexity is lower than any other algorithm algorithms known to the authors, in the literature, it is constant as there is no recursivity in the algorithm and independent of any search window area size. Experimental evaluations have shown the robustness of the algorithm when applied on a wide set of video sequences--a good performance compared to other reduced complexity algorithms and negligible loss of efficiency versus the full search algorithm.

摘要

用于视频编码的全搜索运动估计算法是一个计算成本很高的过程。因此,在实时低功耗应用中,低成本运动估计算法是可行的解决方案。本文提出了一种新颖的降低复杂度的运动估计算法。它将计算负载的降低与良好的编码效率结合起来。该算法利用运动场的历史信息来预测当前运动场。通过一个连续细化阶段得到最终的运动场。这种方法显著减少了需要测试的运动向量数量。该算法的复杂度低于作者所知的任何其他算法,在文献中,由于算法中没有递归,其复杂度是恒定的,并且与任何搜索窗口面积大小无关。实验评估表明,该算法应用于广泛的视频序列时具有鲁棒性——与其他降低复杂度的算法相比性能良好,与全搜索算法相比效率损失可忽略不计。

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