论文标题
单图降雨的结构残差学习
Structural Residual Learning for Single Image Rain Removal
论文作者
论文摘要
为了减轻图像处理任务中雨条的不利影响,最近已经提出了基于CNN的单像降雨方法。但是,这些深度学习方法的性能在很大程度上取决于预采用的训练雨林图像对中包含的雨形范围。这使它们很容易被困在训练的样本问题上,并且无法将其概括为具有复杂和多样化的雨条的实用雨图像。在这个概括问题上,这项研究提出了一种新的网络体系结构,通过强制执行网络的剩余,具有内在的降雨结构。这样的结构残差设置可以保证网络提取的雨层可以很好地符合一般雨条的先验知识,因此调节了能够在训练和预测阶段中从雨水图像中充分提取的声音雨形。这样的一般正则化功能自然会导致其更好的训练准确性和测试概括能力,即使对于那些不见的降雨配置也是如此。与当前最新方法相比,在合成和实数数据集上实施的实验和实际数据集实现了这种优势。
To alleviate the adverse effect of rain streaks in image processing tasks, CNN-based single image rain removal methods have been recently proposed. However, the performance of these deep learning methods largely relies on the covering range of rain shapes contained in the pre-collected training rainy-clean image pairs. This makes them easily trapped into the overfitting-to-the-training-samples issue and cannot finely generalize to practical rainy images with complex and diverse rain streaks. Against this generalization issue, this study proposes a new network architecture by enforcing the output residual of the network possess intrinsic rain structures. Such a structural residual setting guarantees the rain layer extracted by the network finely comply with the prior knowledge of general rain streaks, and thus regulates sound rain shapes capable of being well extracted from rainy images in both training and predicting stages. Such a general regularization function naturally leads to both its better training accuracy and testing generalization capability even for those non-seen rain configurations. Such superiority is comprehensively substantiated by experiments implemented on synthetic and real datasets both visually and quantitatively as compared with current state-of-the-art methods.