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A Novel Region-Based Method for Moving Shadow Detection

机译:一种基于区域的运动阴影检测新方法

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摘要

Shadows have a significant effect on the performance of many computer vision tasks, such as object tracking, action recognition, and structure health monitoring. In many object detection systems, shadows are often misclassified as parts of the moving objects or independent moving objects. As a result, the performance of these subsequent higher-level tasks is adversely affected. This paper presents a novel region-based method for detecting moving shadows by exploiting a new feature of pixel-geometry direction combined with the pixel-gradient magnitude. The new feature can be directly extracted from the given frame without prior knowledge about the scene or object properties. A major advantage of using such features for shadow classification is the ability to solve most of the problems associated with shadow detection in videos. Experimental results show that the proposed method is computationally faster and has higher detection rates and discrimination rates when compared to three well-known methods.
机译:阴影对许多计算机视觉任务(例如对象跟踪,动作识别和结构运行状况监视)的性能有重大影响。在许多物体检测系统中,阴影经常被误分类为运动物体或独立运动物体的一部分。结果,这些后续更高级别任务的性能受到不利影响。本文提出了一种新颖的基于区域的方法,该方法通过利用像素几何方向与像素梯度幅度相结合的新功能来检测运动阴影。无需事先了解场景或对象属性,就可以直接从给定的帧中提取新功能。使用此类功能进行阴影分类的主要优点是能够解决视频中与阴影检测相关的大多数问题。实验结果表明,与三种众所周知的方法相比,该方法计算速度更快,检测率和判别率更高。

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