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Super-resolution reconstruction of depth image based on edge-selected deep residual network

机译:基于边缘选择深度残差网络的深度图像超分辨率重建

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In recent years, depth images have been widely used in human daily life and production, but the quality of the images obtained is often poor and the resolution is low. The existing improved methods often assume that there are common edges between the color image and the depth image, and then super-resolution the depth image under the guidance of the color image. When the part of depth image is smooth and the high-frequency details of the corresponding part of color image are rich, the color details that should not exist will be introduced into depth image. In this paper, an edge-selected deep residual network is proposed for depth image super-resolution. The scheme can effectively extract the common features of color and depth images, reduce the influence of irrelevant color details on super-resolution images, and ultimately improve the resolution of depth images. In the experiment of super-resolution, this method is effective and reliable.
机译:近年来,深度图像已被广泛用于人类的日常生活和生产中,但是所获得的图像的质量通常较差并且分辨率较低。现有的改进方法经常假设彩色图像和深度图像之间存在共同的边缘,然后在彩色图像的指导下对深度图像进行超分辨率。当深度图像的该部分是平滑的并且彩色图像的对应部分的高频细节丰富时,不应存在的颜色细节将被引入深度图像。本文针对深度图像的超分辨率提出了一种边缘选择的深度残差网络。该方案可以有效地提取彩色图像和深度图像的共同特征,减少无关颜色细节对超分辨率图像的影响,最终提高深度图像的分辨率。在超分辨率实验中,该方法有效,可靠。

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