基于灰度空间先验的水下图像视觉增强算法

Underwater Image Visual Enhancement Based on Gray Space Prior

  • 摘要: 水下图像受光线散射和吸收的影响,通常表现出对比度低、颜色失真和细节丢失等问题。为了改善水下图像视觉退化现象,提出了一种基于灰度空间先验的水下图像增强算法。算法以灰度空间先验作为设计引导,首先利用改进的高斯模型对图像进行预处理,均衡水下环境引起的颜色偏移问题,恢复图像的自然感知色彩。然后,将均衡图像由RGB空间映射至灰度空间,通过灰度暗通道先验算法估计出灰度图像的透射率和环境光值,结合水下成像模型计算出噪点特征分布。最后,以灰度空间先验作为映射枢纽,建立彩色空间与灰度空间的特征关联,消除噪点在RGB空间中的视觉模糊,提升水下退化图像的感知清晰度。在公开水下基准数据集上的实验结果表明,相较于现有水下图像增强方法而言,该方法在色彩均衡、细节增强等方面有着更优的性能表现。

     

    Abstract: Underwater images typically exhibit low contrast, color distortion, and detail loss due to light scattering and absorption. To mitigate these issues, a novel underwater image visual enhancement algorithm based on a gray space prior is proposed. The algorithm first applies an improved Gaussian model for image preprocessing, addressing the color shifts caused by the underwater environment and restoring the natural perceived colors of the image. The balanced image is then mapped from the RGB space to the gray space, where the dark channel prior algorithm estimates the transmission map and ambient light values in the gray space. These estimates, combined with the underwater imaging model, are used to compute the noise characteristic distribution. Finally, the gray space prior is treated as a mapping hub, correlating features in the color and gray spaces to eliminate visual blurriness in the RGB space caused by noise, and improving the perceived clarity of the degraded underwater image. Experimental results on publicly available underwater benchmark datasets demonstrate that this approach offers superior performance in color balance and detail enhancement compared with existing underwater image enhancement methods.

     

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