论文标题

非局部共发生,以降级图像

Nonlocal Co-occurrence for Image Downscaling

论文作者

Ghosh, Sanjay, Garai, Arpan

论文摘要

图像降尺度是图像处理和计算机图形中广泛使用的操作之一。最近在文献中证明,基于内核的卷积过滤器可以修改以开发有效的图像降压算法。在这项工作中,我们提出了一种基于基于内核的图像滤波概念的新缩小技术。我们建议将像素的成对共发生相似性作为滤波操作中的范围内核相似性。像素对的共发生直接从输入图像中学到。这种共同出现的学习是在整个图像中以基于邻里的方式进行的。所提出的方法可以将存在于输入图像中存在的高频结构保存到缩小的图像中。这个想法进一步扩展到了降尺度因素的情况。由此产生的图像保留了最重要的细节,并且不会遭受边缘蓝色的伪像。我们通过广泛的实验证明了我们提出的方法对大量缩小缩小因子的大量图像的有效性。

Image downscaling is one of the widely used operations in image processing and computer graphics. It was recently demonstrated in the literature that kernel-based convolutional filters could be modified to develop efficient image downscaling algorithms. In this work, we present a new downscaling technique which is based on kernel-based image filtering concept. We propose to use pairwise co-occurrence similarity of the pixelpairs as the range kernel similarity in the filtering operation. The co-occurrence of the pixel-pair is learned directly from the input image. This co-occurrence learning is performed in a neighborhood based fashion all over the image. The proposed method can preserve the high-frequency structures, which were present in the input image, into the downscaled image. The idea is further extended to the case of fractions factor of downscaling. The resulting images retain visually-important details and do not suffer from edge-blurring artifact. We demonstrate the effectiveness of our proposed approach with extensive experiments on a large number of images downscaled with various downscaling factors.

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