数字图像间低精度全局运动估计的广义框架

K. Yang, M. Frater, E. Huntington, M. Pickering, J. Arnold
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引用次数: 6

摘要

实时数字图像处理操作的效率对复杂算法的成本和可实现性有着重要的影响。全局运动估计就是这种复杂算法的一个例子。大多数数字图像处理以每像素8位的精度进行,但是人们一直对低复杂度算法感兴趣。实现低复杂度的一种方法是通过低精度,例如可以通过将每个像素量化为单个比特来实现。以前的一比特运动估计方法是通过空间滤波/平均和阈值设置的组合来实现量化的。在本文中,我们提出了一个广义的精度约简框架。在这个框架的激励下,我们证明了比特平面选择比传统的量化方法提供了更高的性能和更低的复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized framework for reduced precision global motion estimation between digital images
The efficiency of real-time digital image processing operations has an important impact on the cost and realizability of complex algorithms. Global motion estimation is an example of such a complex algorithm. Most digital image processing is carried out with a precision of 8 bits per pixel, however there has always been interest in low-complexity algorithms. One way of achieving low complexity is through low precision, such as might be achieved by quantization of each pixel to a single bit. Previous approaches to one-bit motion estimation have achieved quantization through a combination of spatial filtering/averaging and threshold setting. In this paper we present a generalized framework for precision reduction. Motivated by this framework, we show that bit-plane selection provides higher performance, with lower complexity, than conventional approaches to quantization.
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