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Self-attentive Pyramid Network for Single Image De-raining

机译:自关注金字塔网络用于单图像去雨

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摘要

Rain Streaks in a single image can severely damage the visual quality, and thus degrade the performance of current computer vision algorithms. To remove the rain streaks effectively, plenty of CNN-based methods have recently been developed, and obtained impressive performance. However, most existing CNN-based methods focus on network design, while rarely exploits spatial correlations of feature. In this paper, we propose a deep self-attentive pyramid network (SAPN) for more powerful feature expression for single image de-raining. Specifically, we propose a self-attentive pyramid module (SAM), which consists of convolutional layers enhanced by self-attention calculation units (SACUs) to capture the abstraction of image contents, and deconvolu-tional layers to upsample the feature maps and recover image details. Besides, we propose self-attention based skip connections to symmetrically link convolutional and deconvolut ional layers to exploit spatial contextual information better. To model rain streaks with various scales and shapes, a multi-scale pooling (MSP) module is also introduced to efficiently leverage features from different scales. Extensive experiments on both synthetic and real-world datasets demonstrate the effectiveness of our proposed method in terms of both quantitative and visual quality.
机译:单个图像中的雨条纹会严重损害视觉质量,从而降低当前计算机视觉算法的性能。为了有效消除雨水条纹,最近开发了许多基于CNN的方法,并获得了令人印象深刻的性能。但是,大多数现有的基于CNN的方法都专注于网络设计,而很少利用特征的空间相关性。在本文中,我们提出了一种深层的自注意金字塔网络(SAPN),以实现更强大的特征表达,从而消除单幅图像。具体来说,我们提出了一种自注意金字塔模块(SAM),该模块由通过自注意计算单元(SACU)增强的卷积层组成,以捕获图像内容的抽象,并通过解卷积层对特征图进行上采样和恢复图像细节。此外,我们提出了基于自我注意的跳过连接,以对称地链接卷积和解卷积层,以更好地利用空间上下文信息。为了模拟各种尺度和形状的雨条,还引入了多尺度合并(MSP)模块,以有效利用不同尺度的要素。在合成数据集和真实数据集上的大量实验证明了我们提出的方法在定量和视觉质量方面的有效性。

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