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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Learning and Removing Cast Shadows through a Multidistribution Approach
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Learning and Removing Cast Shadows through a Multidistribution Approach

机译:通过多分布方法学习和消除投射阴影

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Moving cast shadows are a major concern for foreground detection algorithms. The processing of foreground images in surveillance applications typically requires that such shadows be identified and removed from the detected foreground. This paper presents a novel pixel-based statistical approach to model moving cast shadows of nonuniform and varying intensity. This approach uses the Gaussian mixture model (GMM) learning ability to build statistical models describing moving cast shadows on surfaces. This statistical modeling can deal with scenes with complex and time-varying illumination, including light saturated areas, and prevent false detection in regions where shadows cannot be detected. The proposed approach can be used with pixel-based descriptions of shadowed surfaces found in the literature. It significantly reduces their false detection rate without increasing the missed detection rate. Results obtained with different scene types and shadow models show the robustness of the approach.
机译:移动投射阴影是前景检测算法的主要问题。在监视应用程序中对前景图像进行处理通常需要识别这些阴影并将其从检测到的前景中删除。本文提出了一种新颖的基于像素的统计方法,可以对不均匀且变化强度的移动投射阴影进行建模。这种方法利用高斯混合模型(GMM)学习能力来构建描述表面上移动的阴影的统计模型。这种统计模型可以处理具有复杂且随时间变化的照明的场景,包括光饱和区域,并防止在无法检测到阴影的区域中进行错误检测。所提出的方法可以与文献中发现的阴影表面的基于像素的描述一起使用。它可以显着降低其错误检测率,而不会增加漏检率。使用不同场景类型和阴影模型获得的结果表明了该方法的鲁棒性。

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