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Underwater image dehaze using scene depth estimation with adaptive color correction

机译:使用场景深度估计和自适应色彩校正的水下图像除雾

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Underwater images suffer from poor visibility due to color casts and light scattering that caused by physical properties existing in underwater environments. Degraded underwater images lead to a low accuracy rate of underwater object detection and recognition. To solve this problem, a novel underwater image enhancement method which combines adaptive color correction and image dehazing based on atmospheric scattering model is proposed in this paper. As the most important component of dehazing model, a transmission map is derived from the color corrected image. Considering the exponential relationship between the transmission map and scene depth map, transmission map estimation will be naturally formulated into a scene depth map estimation problem. To predict scene depth map, a Convolutional Neural Network (CNN) is employed on image patches extracted from the color corrected image. The experimental results show that the proposed strategy improves the quality of underwater images efficiently and arrives at good results in underwater objects detection and recognition.
机译:水下图像由于由水下环境中存在的物理属性引起的偏色和光散射而导致可见性差。退化的水下图像导致水下物体检测和识别的准确率较低。为解决这一问题,本文提出了一种新的水下图像增强方法,该方法结合了基于大气散射模型的自适应色彩校正和图像去雾。作为除雾模型的最重要组成部分,从色彩校正后的图像中得出透射图。考虑到传输图和场景深度图之间的指数关系,传输图估计将自然地公式化为场景深度图估计问题。为了预测场景深度图,对从色彩校正后的图像中提取的图像块采用卷积神经网络(CNN)。实验结果表明,该策略有效提高了水下图像的质量,在水下物体的检测和识别中取得了良好的效果。

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