基于均值移位的行人检测融合方法

Liping Yu, Wentao Yao
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引用次数: 3

摘要

行人检测是一项具有挑战性的任务,需要对出现在图像和视频中的行人进行精确定位。基于窗口扫描的检测方法利用多尺度检测窗口对图像进行密集扫描,证明了其应用前景。然而,如何将这些行人检测器得到的密集检测结果融合并得到最终的目标检测,这一关键问题在文献中并没有得到很好的解决。本文提出并实现了一种通用的行人检测融合方法。该方法将检测融合视为核密度估计,通过均值移位迭代实现。此外,采用了最近邻一致性的概念,大大加快了融合过程。实验结果证明了基于均值漂移的融合方法的有效性。
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Pedestrian Detection Fusion Method Based on Mean Shift
Detecting pedestrians is a challenging task, which requires precise localization of pedestrians that appear in images and videos. Window-scanning based detection methods have demonstrated their promise by scanning the image densely with multi-scale detection window. However, an essential and critical issue, i.e., how to fuse these dense detections obtained through pedestrian detector and yield the final target detection, is not well addressed in the literature. This paper proposes and implements a general method for fusing pedestrian detections. In this method, detection fusion is regarded as a kernel density estimate and implemented through mean shift iterative procedure. Moreover, the notion of nearest neighbor consistency is adopted, which significantly accelerates the fusion procedure. Experimental results demonstrate the efficiency of the mean shift-based fusion method.
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