用于检测三维矩形实体的计算机视觉系统

Kashi Rao
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引用次数: 4

摘要

提出了一种用于三维矩形物体检测的计算机视觉系统。我们首先描述了在真实视频/图像中检测任意方向、位置、距离摄像机和照明的矩形实体的方法。该方法通过检测矩形实体的连接处和相邻边缘来工作。如果有背景的粗略参考图像,也可以使用。我们已经在数百张真实图像和视频序列上测试了我们的系统。特别是,我们通过绘制接收器操作特征曲线(检测概率与假警报概率)来评估系统性能。在具有丰富背景结构的场景中,对500幅图像和视频序列的结果绘制这些曲线;也就是说,场景有大量的背景线和矩形。在这样的环境下,我们以13%的虚警率实现了93%的检测。该系统的潜在应用包括检测包装箱、卡车拖车和矩形建筑物。该系统可用于视频索引,也可用于安防监控系统中的视频监控。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A computer vision system to detect 3-D rectangular solids
We present a computer vision system to detect 3D rectangular objects. We first describe the method to detect rectangular solids in real video/images in arbitrary orientations, positions, distances from the camera and lighting. The method works by detecting junctions and adjacent edges of rectangular solids. If a rough reference image of the background is available, that can also be used. We have tested our system on several hundreds of real images and video sequences. In particular, we evaluated the system performance by plotting receiver operating characteristic carves (probability of detection versus probability of false alarm). These curves were plotted for results on 500 images and video sequences acquired an a scene with rich background structure; that is, the scene had a large number of background lines and rectangles. In such an environment, we achieved 93% detection at a 13% false alarm rate. Potential applications of this system include detection of packing boxes, trailers of trucks and rectangular buildings. This system could be used for video indexing or for video surveillance in a security monitoring system.
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