Efficient acquisition of human existence priors from motion trajectories

H. Habe, Hidehito Nakagawa, M. Kidode
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引用次数: 1

Abstract

This paper reports a method for acquiring the prior probability of human existence by using past human trajectories and the color of an image. The priors play important roles in human detection as well as in scene understanding. The proposed method is based on the assumption that a person can exist again in an area where he/she existed in the past. In order to acquire the priors efficiently, a high prior probability is assigned to an area having the same color as past human trajectories. We use a particle filter for representing the prior probability. Therefore, we can represent a complex prior probability using only a few parameters. Through experiments, we confirmed that our proposed method can acquire the prior probability efficiently and it can realize highly accurate human detection using the obtained prior probability.
从运动轨迹中有效地获取人类存在先验
本文报告了一种利用过去的人类轨迹和图像的颜色来获取人类存在的先验概率的方法。先验在人类检测和场景理解中起着重要的作用。所提出的方法是基于一个假设,即一个人可以再次存在于他/她过去存在过的地方。为了有效地获取先验,对与过去人类轨迹具有相同颜色的区域分配高先验概率。我们使用粒子滤波来表示先验概率。因此,我们可以只用几个参数来表示一个复杂的先验概率。通过实验,我们证实了我们的方法可以有效地获取先验概率,并且可以利用得到的先验概率实现高精度的人体检测。
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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