通过自适应色彩校正和多尺度直方图均衡提高水下图像质量

Mr.T.Sreedhar, B.Ajay Jeevith Kumar, P.Venkateswarlu, G.Bhargav Vamsi, U.Venkata Manikanta
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引用次数: 0

摘要

由于光在水中的选择性衰减,水下图像的可视性很差,给视觉活动带来了巨大挑战。在退化的水下图像中,不同区域的结构和统计特性会受到不同程度的破坏,从而导致物体表示的整体漂移不均匀,进一步降低图像质量。为了解决这些问题,我们介绍了一种通过多盆直方图透视均衡来增强水下图像的方法,以解决水下图像带来的问题。我们通过提取图像的统计特征来估计每个图像区域的特征变化程度,并利用这些信息来控制特征增强,实现自适应特征增强,从而改善降级图像的视觉效果。我们首先设计了一个振动模型,利用数据元素和规则元素之间的差异来提高基于线性变换的子区间法的色彩校正性能。此外,我们还开发了一种多阈值选择方法,可自适应地选择一组阈值进行区间划分。最后,介绍了一种多分区子柱状图均衡方法,该方法在每个子柱状图中执行柱状图均衡,以改善图像对比度。各种场景下的水下成像实验表明,我们的方法在质量和数量上都明显优于许多最先进的方法:多间隔、多尺度融合(MF)、子直方图均衡化(SHE)、水下图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ENHANCING UNDERWATER IMAGE QUALITY THROUGH ADAPTIVE COLOR CORRECTION AND MULTI-SCALE HISTOGRAM EQUALIZATION
Due to the selective attenuation of light in water, underwater images are poorly visible and pose significant challenges in visual activities. The structural and statistical properties of different areas of degraded underwater images are damaged to different levels, resulting in an overall uneven drift of object representation and further degrading the image quality. In order to solve these problems, we introduce a method for enhancing underwater images through multi-bin histogram perspective equalization under to solve the problems caused by underwater images. We estimate the degree of feature variation in each image region by extracting the statistical features of the image and using this information to control feature enhancement to achieve adaptive feature enhancement, thereby improving the visual effect of degraded images. We first design a vibration model that exploits the difference between data elements and regular elements to improve the color correction performance of the linear transformation-based sub-interval method. In addition, a multiple threshold selection method was developed that adaptively selects a set of thresholds for interval division. Finally, a multi-bin sub-histogram equalization method is presented, which performs histogram equalization in each sub-histogram to improve image contrast. Underwater imaging experiments in various scenarios show that our method significantly outperforms many state-of-the-art methods in terms of quality and quantity. INDEX TERMS: Multiple intervals, multi-scale fusion (MF), sub histogram equalization (SHE), underwater image.
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