Mutual information computation and maximization using GPU

Yuping Lin, G. Medioni
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引用次数: 39

Abstract

We present a GPU implementation to compute both mutual information and its derivatives. Mutual information computation is a highly demanding process due to the enormous number of exponential computations. It is therefore the bottleneck in many image registration applications. However, we show that these computations are fully parallizable and can be efficiently ported onto the GPU architecture. Compared with the same CPU implementation running on a workstation level CPU, we reached a factor of 170 in computing mutual information, and a factor of 400 in computing its derivatives.
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基于GPU的互信息计算与最大化
我们提出了一种计算互信息及其导数的GPU实现。互信息计算是一个要求很高的过程,因为它需要大量的指数计算。因此,它是许多图像配准应用中的瓶颈。然而,我们证明了这些计算是完全可并行的,可以有效地移植到GPU架构上。与在工作站级CPU上运行的相同CPU实现相比,我们在计算互信息方面达到了170倍,在计算其导数方面达到了400倍。
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