A Reflectance Based Method For Shadow Detection and Removal

S. Yarlagadda, F. Zhu
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引用次数: 12

Abstract

Shadows are common aspect of images and when left undetected can hinder scene understanding and visual processing. We propose a simple yet effective approach based on reflectance to detect shadows from single image. An image is first segmented and based on the reflectance, illumination and texture characteristics, segments pairs are identified as shadow and non-shadow pairs. The proposed method is tested on two publicly available and widely used datasets. Our method achieves higher accuracy in detecting shadows compared to previous reported methods despite requiring fewer parameters. We also show results of shadow-free images by relighting the pixels in the detected shadow regions.
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基于反射率的阴影检测与去除方法
阴影是图像的常见方面,如果不被发现,可能会阻碍对场景的理解和视觉处理。提出了一种简单有效的基于反射率的单幅图像阴影检测方法。首先对图像进行分割,根据反射率、照度和纹理特征,将分割对识别为阴影对和非阴影对。在两个公开可用且广泛使用的数据集上对所提出的方法进行了测试。与之前报道的方法相比,我们的方法在检测阴影方面获得了更高的精度,尽管需要的参数更少。我们还通过重新照亮检测到的阴影区域中的像素来显示无阴影图像的结果。
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