Underwater images are inevitably affected by color distortion and reduced contrast. Traditional statistic-based methods such as white balance and histogram stretching attempted to adjust the imbalance of color channels and narrow distribution of intensities a priori thus with limited performance. Recently, deep-learning-based methods have achieved encouraging results. However, the involved complicate architecture and high computational costs may hinder their deployment in practical constrained platforms. Inspired by above works, we propose a statistically guided lightweight underwater image enhancement network (USLN). Concretely, we first develop a dual-statistic white balance module which can learn to use both average and maximum of images to compensate the color distortion for each specific pixel. Then this is followed by a multi-color space stretch module to adjust the histogram distribution in RGB, HSI, and Lab color spaces adaptively. Extensive experiments show that, with the guidance of statistics, USLN significantly reduces the required network capacity (over98%) and achieves state-of-the-art performance. The code and relevant resources are available at https://github.com/deepxzy/USLN.
翻译:以统计为基础的传统方法,如白平衡和直方图伸展等,试图以有限的性能来调整色色频道的不平衡和强度的狭小分布。最近,基于深层学习的方法取得了令人鼓舞的成果。然而,所涉及的复杂结构以及高昂的计算成本可能妨碍在实际受限平台的部署。受上述工程的启发,我们建议建立一个以统计为导向的轻量水下图像增强网络(USLN)。具体地说,我们首先开发一个双重统计的白色平衡模块,可以学习使用平均和最大比例的图像来弥补每个特定像素的色彩扭曲。然后,一个多色空间伸缩模块来调整RGB、HSI和实验室色彩空间的外观分布。广泛的实验表明,在统计指导下,美国实验室大大降低了所需的网络能力(超过98%)并实现了艺术状态的性能。代码和相关资源可在https://github.com/deepxy/USLN上查阅。