基于行人检测器的对应滤波器约束相对相机姿态估计

Emanuel Aldea, T. Pollok, Chengchao Qu
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引用次数: 0

摘要

有效使用智能摄像机网络的先决条件是对摄像机传感器进行精确的外部校准,无论是在固定坐标系中,还是彼此相对。对于视场部分重叠的摄像机,相对姿态估计可以直接在场景分析过程中获得的视频内容上进行或辅以。然而,在典型的条件下(宽基线、重复模式、行人的均匀外观),姿态估计是不精确的,并且经常受到视野弱约束区域的大误差的影响。在这项工作中,我们提出分别由行人检测器和重新识别算法指导,对相机视图之间的特征关联依赖逐渐严格的约束。结果表明,这两种策略都能有效地缓解由于行人外观相似而导致的模糊,并提高相对姿态估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constraining Relative Camera Pose Estimation with Pedestrian Detector-Based Correspondence Filters
A prerequisite for using smart camera networks effectively is a precise extrinsic calibration of the camera sensors, either in a fixed coordinate system, or relatively to each other. For cameras with partly overlapping fields of view, the relative pose estimation may be directly performed on or assisted by the video content obtained during scene analysis. In typical conditions however (wide baseline, repetitive patterns, homogeneous appearance of pedestrians), the pose estimation is imprecise and very often is affected by large errors in weakly constrained areas of the field of view. In this work, we propose to rely on progressively stricter constraints on the feature association between the camera views, guided by a pedestrian detector and a re-identification algorithm respectively. The results show that the two strategies are effective in alleviating the ambiguity which is due to the similar appearance of pedestrians in such scenes, and in improving the relative pose estimation.
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