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Constant-Time Gaussian Filtering for Acceleration of Structure Similarity

机译:用于加速结构相似性的恒定高斯滤波

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In this paper, we propose an acceleration method of structural similarity (SSIM) and its multi-scaled version, called MS-SSIM. The calculation process of SSIM and MS-SSIM includes multiple Gaussian filters, and the cost of the filter is dominant for the entire process; thus, to accelerate SSIM/MS-SSIM, we replace Gaussian filtering using convolution with sliding DCT. Gaussian filter based on sliding DCT is faster than the usual convolution method. Besides, its computational complexity does not depend on the filter window length. Also, naive implementations of SSIM and MS-SSIM scan image many times for the pixel-wise operation; however, these operations can be incorporated into Gaussian filtering. Thus, we optimize the processing pipeline to achieve high cache-efficiency. As a result, the proposed SSIM computation was accelerated by 6.36 times and MS-SSIM by 8.11 times faster than the conventional approach.
机译:在本文中,我们提出了一种结构相似性(SSIM)及其多级版本的加速方法,称为MS-SSSIM。 SSIM和MS-SSIM的计算过程包括多个高斯滤波器,滤波器的成本为整个过程的主导;因此,为了加速SSIM / MS-SSSIM,我们使用滑动DCT的卷积替换高斯滤波。基于滑动DCT的高斯滤波器比通常的卷积方法更快。此外,其计算复杂性不依赖于滤波器窗口长度。此外,SSIM和MS-SSIM扫描图像的天真实现多次用于像素明智的操作;然而,这些操作可以纳入高斯滤波。因此,我们优化处理管道以实现高高的缓存效率。因此,所提出的SSIM计算加速了6.36倍,MS-SSIM的速度快于传统方法速度快8.11倍。

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