Publication | Closed Access
Decomposition Makes Better Rain Removal: An Improved Attention-Guided Deraining Network
110
Citations
79
References
2020
Year
Convolutional Neural NetworkEngineeringSpatiotemporal Data FusionRain StreaksEarth ScienceDeblurringImage ClassificationImage AnalysisData ScienceImage-based ModelingComputational ImagingMachine VisionFeature LearningRain LayersDeep LearningComputer VisionEnvironmental EngineeringRemote SensingImage DenoisingImage Restoration
Rain streaks in the air show diverse characteristics with different shapes, directions, densities, even the complex overlapped phenomenon, causing great challenges for the deraining task. Recently, deep learning based image deraining methods have been extensively investigated due to their excellent performance. However, most of the existing algorithms still have limitations in removing rain streaks while preserving rich textural details under complicated rain conditions. To this end, we propose to decompose rain streaks into multiple rain layers and individually estimate each of them along the network stages to cope with the increasing abstracts. To better characterize rain layers, an improved non-local block is designed to exploit the self-similarity of rain information by learning the holistic spatial feature correlations while reducing the calculation complexity. Moreover, a mixed attention mechanism is applied to guide the fusion of rain layers by focusing on the local and global overlaps among these rain layers. Extensive experiments on both synthetic rainy/rain-haze/raindrop datasets, real-world samples, the haze, and low-light scenarios show substantial improvements both on quantitative indicators and visual effects over the current state-of-the-art technologies. The source code is available at <uri xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">https://github.com/kuihua/IADN</uri> .
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