Detecting partially occluded objects via segmentation and validation

M. Levihn, M. Dutton, A. J. Trevor, M. Silman
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引用次数: 2

Abstract

This paper presents a novel algorithm: Verfied Partial Object Detector (VPOD) for accurate detection of partially occluded objects such as furniture in 3D point clouds. VPOD is implemented and validated on real sensor data obtained by our robot. It extends Viewpoint Feature Histograms (VFH), which classify unoccluded objects, to also classify partially occluded objects such as furniture that might be seen in typical office environments. To achieve this result, VPOD employs two strategies. First, object models are segmented and the object database is extended to include partial models. Second, once a matching partial object is detected, the complete object model is aligned back into the scene and verified for consistency with the point cloud data. Overall, our approach increases the number of objects found and substantially reduces false positives due to the verification process.
通过分割和验证检测部分遮挡的物体
针对三维点云中部分遮挡物体(如家具)的精确检测,提出了一种新的算法:验证部分遮挡物体检测器(VPOD)。在机器人获取的真实传感器数据上对VPOD进行了实现和验证。它扩展了对未遮挡物体进行分类的视点特征直方图(VFH),也可以对部分遮挡的物体(如典型办公环境中可能看到的家具)进行分类。为了达到这个效果,VPOD采用了两种策略。首先,对对象模型进行分割,对对象数据库进行扩展,使其包含部分模型;其次,一旦检测到匹配的部分对象,则将完整的对象模型对齐回场景并验证与点云数据的一致性。总的来说,我们的方法增加了发现对象的数量,并大大减少了由于验证过程而产生的误报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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