阴影处理与颜色模型调整和纹理分析

Md. Azhar Uddin, Tahmina Khanam, Mohammad Badhruddouza Khan, K. Deb, K. Jo
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引用次数: 0

摘要

目标检测是计算机视觉中的一项基本任务。在大多数情况下,这种动机经常被图像中的阴影所破坏。这些场景导致了对阴影处理的巨大需求。与此同时,阴影的检测和去除方法被用于改进计算机视觉的应用,如图像分割、物体识别和跟踪。本文的主要目标是通过分析颜色模型和背景纹理模式来检测和去除图像中的阴影。首先,通过调整颜色模型从给定的前景区域检测阴影边界。然后测量阴影区域与相邻非阴影区域纹理特征的相似度。最后,基于这些相似性,将非阴影区域的纹理图案投影到阴影区域,得到无阴影图像。然而,值得注意的是,这里使用局部二值模式(Local Binary Pattern, LBP)来测量纹理特征,因为它简单有效。此外,该简单的方法获得了87.81%的良好检出率,去除阴影后具有较高的PSNR(22.41)、SSIM(0.9432)和较低的RMSE(3.48)值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shadow processing with color model adjustment and texture analysis
Object detection is a fundamental task in computer vision. In most cases, this motive is often corrupted by the shadows in an image. These scenarios consequence a great need of shadow processing. Along with this, the method of detecting and removing shadow is used to improve computer vision applications such as image segmentation, object recognition and tracking. The prime objective of this paper is to detect and remove shadow from an image by analyzing color models and background texture pattern. Initially, shadow boundaries are detected from a given foreground region by adjusting color models. Then the similarity between texture features of shadow and neighboring non-shadow region is measured. Finally, based on these similarities, texture pattern of non-shadow region is projected onto the shadow region to get a shadow free image. However, it is noteworthy that Local Binary Pattern (LBP) is used here to measure the texture feature as it is simple and efficient. In addition, this simple methodology has achieved a good detection rate of 87.81 % and presented a high PSNR (22.41), SSIM (0.9432) value and low RMSE (3.48) value after shadow removal.
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