Shen Yue, Zhang Yuduo, Li Wentao, Qin Changjie, Huang Yongdong
College of Science, Dalian Minzu University, Dalian, 116600, China.
Sci Rep. 2024 Aug 21;14(1):19426. doi: 10.1038/s41598-024-70329-2.
Rain is a common weather phenomenon, and the challenge of removing rain streaks from a single image is crucial due to its detrimental impact on image quality and the extraction of valuable background information. Existing methods commonly rely on specific assumptions regarding rain models, which restricts their ability to accommodate a wide range of real-world scenarios. To overcome this limitation, these methods often require complex optimization techniques or stepwise refinement strategies. In this paper, we propose a novel wide rectangular regional block and dual attention complementary enhancement deraining kernel prediction subnet to meet the challenge. The network called WRRDANet consists of a kernel prediction subnet and pixel-wise dilation filtering. In the kernel prediction subnet, we capture more specific contextual background information and complex pixel-wise kernels. Afterward, the learned pixel-wise multi-scale kernels from the kernel prediction subnet are used to perform dilation filtering on the original rainy image, effectively restoring richer background details by expanding the scope of deraining to a larger extent. We conducted a comprehensive evaluation using synthetic and real rainfall datasets to demonstrate the effectiveness of our approach. The results, both qualitatively and quantitatively, indicate that our approach outperforms other popular rain removal methods.
降雨是一种常见的天气现象,由于其对图像质量和有价值背景信息提取的不利影响,从单张图像中去除雨痕的挑战至关重要。现有方法通常依赖于关于降雨模型的特定假设,这限制了它们适应广泛现实世界场景的能力。为克服这一限制,这些方法通常需要复杂的优化技术或逐步细化策略。在本文中,我们提出了一种新颖的宽矩形区域块和双注意力互补增强去雨内核预测子网来应对这一挑战。名为WRRDANet的网络由内核预测子网和逐像素膨胀滤波组成。在内核预测子网中,我们捕捉更具体的上下文背景信息和复杂的逐像素内核。随后,从内核预测子网中学习到的逐像素多尺度内核用于对原始降雨图像进行膨胀滤波,通过将去雨范围更大程度地扩展,有效地恢复更丰富的背景细节。我们使用合成和真实降雨数据集进行了全面评估,以证明我们方法的有效性。定性和定量结果均表明,我们的方法优于其他流行的雨去除方法。