Underwater Image Enhancement using a Light Convolutional Neural Network and 2D Histogram Equalization

Ali Khandouzi, M. Ezoji
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Abstract

Underwater images usually have low contrast, blurring, and extreme color distortion because the light is refracted, scattered, and absorbed as it passes through the water. These features can lead to challenges in image-based processing and analysis. In this paper, a two-step method based on a deep convolution network is proposed for solving these problems and enhancing underwater images. First, through a light global-local structure, the initial image enhancement is performed and the color distortion and degradation of the images are partially covered. Then, two-dimensional histogram equalization is used as an appropriate complement to the network. Two-dimensional histogram equalizing is able to produce clear results and prevents excessive contrast. The results show that the proposed method performs better than other methods in this field in terms of qualitative and quantitative criteria.
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基于光卷积神经网络和二维直方图均衡化的水下图像增强
水下图像通常具有低对比度,模糊,和极端的色彩失真,因为光的折射,散射和吸收,因为它通过水。这些特性会给基于图像的处理和分析带来挑战。本文提出了一种基于深度卷积网络的两步法来解决这些问题,并对水下图像进行增强。首先,通过轻全局-局部结构对图像进行初始增强,部分覆盖图像的颜色失真和退化;然后,使用二维直方图均衡化作为网络的适当补充。二维直方图均衡化能够产生清晰的结果,并防止过度的对比度。结果表明,该方法在定性和定量标准方面都优于该领域的其他方法。
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