Semi-Instance Normalization Network for Turbulence Degraded Image Restoration

Junxiong Fei, Zezheng Li, Xia Hua, Yuerui Zhang, Mingxin Li, Zhigao Huang
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Abstract

In computer vision tasks, a variety of normalization methods are widely used. Compared with other normalization methods, Instance Normalization (IN) performs better in turbulence degraded image restoration. However, the simple application of IN to a degraded image restoration network can be suboptimal. In this paper, we present a novel block named Semi Instance Normalization Block (SIN Block), which can improve the performance of the image restoration network. SIN Block incorporates original features in the normalization layer, which can preserve contextual information. Furthermore, we designed a semi-instance normalization Network (SINet) consisting of a series of the SIN Block for restoring turbulence degraded images. Extensive experiment on simulation dataset demonstrates that SINet can effectively restore details of the turbulence degraded image and sharpen its edges.
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湍流退化图像恢复的半实例归一化网络
在计算机视觉任务中,各种归一化方法被广泛使用。与其他归一化方法相比,实例归一化(IN)在湍流退化图像恢复中具有更好的性能。然而,对于退化图像恢复网络的简单应用可能不是最优的。本文提出了一种新的块,称为半实例归一化块(SIN block),它可以提高图像恢复网络的性能。SIN块在归一化层中融入了原始特征,可以保留上下文信息。此外,我们还设计了一个由一系列SINet块组成的半实例归一化网络(SINet),用于恢复湍流退化图像。在仿真数据集上的大量实验表明,SINet可以有效地恢复湍流退化图像的细节并锐化图像的边缘。
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