ek -意思是追踪器:使用kinect的逐像素跟踪算法

Yiqiang Qi, Kazumasa Suzuki, Haiyuan Wu, Qian Chen
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引用次数: 9

摘要

本文描述了一种新的目标跟踪算法,该算法利用k均值聚类算法将搜索区域内的像素点划分为“目标”和“背景”。对传统的K-means跟踪器进行了两方面的改进,解决了某些背景物体与目标颜色相似或目标物体大小发生显著变化时的不稳定性问题。第一种方法是将深度信息作为第六个特征引入原始5D特征空间,用于描述像素。二是利用马氏距离,在评估像素差时保持颜色和位置的平衡。ek -意味着跟踪器可以以视频速率跟踪非刚性物体和有线物体。通过多次对比实验,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EK-means tracker: A pixel-wise tracking algorithm using kinect
This paper describes a novel object-tracking algorithm by classifying the pixels in a search area into “target” and “background” with K-means clustering algorithm. Two improvements are made to the conventional K-means tracker to solve the instability problem that occurs when some background objects show similar colors to the target or the size of the target object changes significantly. The first one is introducing of the depth information as the sixth feature into the original 5D feature space for describing pixels. The second one is to use Mahalanobis distance in order to keep the balance between color and position when evaluating the difference between pixels. EK-means Tracker can track non-rigid object and wired object at video rate. Its effectiveness was confirmed through several comparison experiments.
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