An adaptive low-complexity global motion estimation algorithm

Md. Nazmul Haque, Moyuresh Biswas, M. Pickering, M. Frater
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引用次数: 5

Abstract

One important recent application of image registration has been in the estimation of global motion parameters for object-based video coding. A limitation of current global motion estimation approaches is the additional complexity of the gradient-descent optimization that is typically required to calculate the optimal set of global motion parameters. In this paper we propose a new low-complexity algorithm for global motion estimation. The complexity of the proposed algorithm is reduced by performing the majority of the operations in the gradient-descent optimization using logic operations rather than full-precision arithmetic operations. This use of logic operations means that the algorithm can be implemented much more easily in hardware platforms such as field programmable gate arrays (FPGAs). Experimental results show that the execution time for software implementations of the new algorithm is reduced by a factor of almost four when compared to existing fast implementations without any significant loss in registration accuracy.
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一种自适应低复杂度全局运动估计算法
图像配准最近的一个重要应用是基于对象的视频编码的全局运动参数估计。当前全局运动估计方法的一个局限性是梯度下降优化的额外复杂性,这通常需要计算全局运动参数的最优集。本文提出了一种新的低复杂度全局运动估计算法。本文提出的梯度下降优化算法采用逻辑运算而不是全精度算术运算,从而降低了算法的复杂度。这种逻辑运算的使用意味着该算法可以更容易地在硬件平台上实现,如现场可编程门阵列(fpga)。实验结果表明,与现有的快速算法相比,新算法的软件执行时间减少了近四倍,而配准精度没有明显下降。
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