A probabilistic sensor for the perception of activities

Olivier Chomat, J. Crowley
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引用次数: 14

Abstract

This paper presents a new technique for the perception of activities using a statistical description of spatio-temporal properties. With this approach, the probability of an activity in a spatio-temporal image sequence is computed by applying a Bayes rule to the joint statistics of the responses of motion energy receptive fields. A set of motion energy receptive fields is designed in order to sample the power spectrum of a moving texture. Their structure relates to the spatio-temporal energy models of Adelson and Bergen where measures of local visual motion information are extracted comparing the outputs of triad of Gabor energy filters. Then the probability density function required for the Bayes rule is estimated for each class of activity by computing multi-dimensional histograms from the outputs from the set of receptive fields. The perception of activities is achieved according to the Bayes rule. The result at a given time is the map of the conditional probabilities that each pixel belongs to an activity of the training set. The approach is validated with experiments in the perception of activities of walking persons in a visual surveillance scenario. Results are robust to changes in illumination conditions, to occlusions and to changes in texture.
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感知活动的概率传感器
本文提出了一种利用时空特性的统计描述来感知活动的新技术。利用这种方法,通过对运动能量接受场响应的联合统计应用贝叶斯规则来计算时空图像序列中活动的概率。为了对运动纹理的功率谱进行采样,设计了一组运动能量接受场。它们的结构与Adelson和Bergen的时空能量模型有关,其中局部视觉运动信息的度量是通过比较Gabor能量滤波器的三联输出来提取的。然后,通过计算来自接收域集的输出的多维直方图来估计每一类活动所需的贝叶斯规则的概率密度函数。活动感知是根据贝叶斯规则实现的。给定时间的结果是每个像素属于训练集的一个活动的条件概率的映射。该方法在视觉监控场景下对行走者活动感知的实验中得到验证。结果对光照条件的变化、遮挡和纹理的变化具有鲁棒性。
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