Feature attention network (FA-Net): a deep-learning based approach for underwater single image enhancement

M. Hamza, Ammar Hawbani, Sami Ul Rehmana, Xingfu Wang, Liang Zhao
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引用次数: 1

Abstract

Underwater image processing and analysis have been a hotspot of study in recent years, as more emphasis has been focused to underwater monitoring and usage of marine resources. Compared with the open environment, underwater image encountered with more complicated conditions such as light abortion, scattering, turbulence, nonuniform illumination and color diffusion. Although considerable advances and enhancement techniques achieved in resolving these issues, they treat low-frequency information equally across the entire channel, which results in limiting the network's representativeness. We propose a deep learning and feature-attention-based end-to-end network (FA-Net) to solve this problem. In particular, we propose a Residual Feature Attention Block (RFAB), containing the channel attention, pixel attention, and residual learning mechanism with long and short skip connections. RFAB allows the network to focus on learning high-frequency information while skipping low-frequency information on multi-hop connections. The channel and pixel attention mechanism considers each channel's different features and the uneven distribution of haze over different pixels in the image. The experimental results shows that the FA-Net propose by us provides higher accuracy, quantitatively and qualitatively and superiority to previous state-of-the-art methods.
特征注意网络(FA-Net):一种基于深度学习的水下单幅图像增强方法
近年来,随着水下监测和海洋资源利用的日益受到重视,水下图像处理与分析成为研究的热点。与开放环境相比,水下图像会遇到光流产、散射、湍流、光照不均匀、色彩扩散等更为复杂的条件。尽管在解决这些问题方面取得了相当大的进步和增强技术,但它们在整个信道中平等地对待低频信息,这限制了网络的代表性。我们提出了一种基于深度学习和特征注意的端到端网络(FA-Net)来解决这个问题。特别地,我们提出了一个残差特征注意块(RFAB),包含通道注意、像素注意和长、短跳连接的残差学习机制。RFAB允许网络专注于学习高频信息,而在多跳连接中跳过低频信息。通道和像素注意机制考虑了每个通道的不同特征以及图像中不同像素上雾霾的不均匀分布。实验结果表明,我们提出的FA-Net在定量和定性方面都具有更高的准确性,并且优于现有的先进方法。
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