P-Net:部分排序的多流活动的表示

Yifan Shi, A. Bobick
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引用次数: 8

摘要

在本文中,我们设计了一个传播网络(P-Net)作为多流活动表示和识别的新机制。大多数日常活动可以用时间上的偏序间隔来表示,其中每个间隔不仅有时间约束,即之前/之后/持续时间,而且还有逻辑关系,如a和b都必须发生。P-Net为每个间隔关联一个节点,该间隔是依赖于其父节点状态的概率触发函数。每个节点还与一个观测分布函数相关联,该函数与感知证据相关联。这种由低级视觉模块产生的证据是基本动作的积极指示。利用这种架构,我们设计了一种迭代时间排序算法,该算法将视觉证据的多维观测序列解释为通过P-Net的多流传播。简单的视觉和动作捕捉数据实验证明了我们算法的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
P-Net: A Representation for Partially-Sequenced, Multi-stream Activity
In this paper, we devise a Propagation Net (P-Net) as a new mechanism for the representation and recognition of multi-stream activity. Most of daily activities can be represented by temporally partial ordered intervals where each interval has not only temporal constraint, i.e., before/after/duration, but also a logical relationship such as a and b both must happen. P-Net associates a node for each interval that is probabilistically triggered function dependent upon the state of its parent nodes. Each node is also associated with an observation distribution function that associates perceptual evidence. This evidence, generated by lower level vision modules, is a positive indicator of the elemental action. Using this architecture, we devise an iterative temporal sequencing algorithm that interprets a multi-dimensional observation sequence of visual evidence as a multi-stream propagation through the P-Net. Simple vision and motion-capture data experiments demonstrate the capabilities of our algorithm.
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