Towards Real-time High-Definition Image Snow Removal: Efficient Pyramid Network with Asymmetrical Encoder-decoder Architecture

Tian Ye, Sixiang Chen, Yun Liu, Y. Ye, Erkang Chen
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引用次数: 8

Abstract

In winter scenes, the degradation of images taken under snow can be pretty complex, where the spatial distribution of snowy degradation is varied from image to image. Recent methods adopt deep neural networks to directly recover clean scenes from snowy images. However, due to the paradox caused by the variation of complex snowy degradation, achieving reliable High-Definition image desnowing performance in real time is a considerable challenge. We develop a novel Efficient Pyramid Network with asymmetrical encoder-decoder architecture for real-time HD image desnowing. The general idea of our proposed network is to utilize the multi-scale feature flow fully and implicitly mine clean cues from features. Compared with previous state-of-the-art desnowing methods, our approach achieves a better complexity-performance trade-off and effectively handles the processing difficulties of HD and Ultra-HD images. The extensive experiments on three large-scale image desnowing datasets demonstrate that our method surpasses all state-of-the-art approaches by a large margin both quantitatively and qualitatively, boosting the PSNR metric from 31.76 dB to 34.10 dB on the CSD test dataset and from 28.29 dB to 30.87 dB on the SRRS test dataset.
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面向实时高清图像除雪:非对称编码器-解码器结构的高效金字塔网络
在冬季场景中,积雪下拍摄的图像的退化非常复杂,每张图像的积雪退化空间分布是不同的。最近的方法采用深度神经网络直接从雪景图像中恢复干净的场景。然而,由于复杂积雪退化变化带来的悖论,实现可靠的高清图像实时降雪性能是一个相当大的挑战。提出了一种具有非对称编解码器结构的高效金字塔网络,用于实时高清图像降噪。我们提出的网络的总体思想是充分利用多尺度特征流,并隐含地从特征中挖掘干净的线索。与以往最先进的降噪方法相比,我们的方法实现了更好的复杂性和性能权衡,有效地解决了高清和超高清图像的处理难题。在三个大规模图像降雪数据集上进行的大量实验表明,我们的方法在数量和质量上都大大超过了所有最先进的方法,在CSD测试数据集上将PSNR指标从31.76 dB提高到34.10 dB,在SRRS测试数据集上将PSNR指标从28.29 dB提高到30.87 dB。
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