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A memory-based distributed vision system that employs a form of attention to recognize group activity at a subway station

机译:基于内存的分布式视觉系统,采用了一种注意力来识别地铁站的群体活动

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The goal of this research is to develop systems that support human activities through environmental intelligence. These systems may include agents that interact with people in a sensor-rich setting. As a first step, we have developed a distributed vision system with 12 omnidirectional cameras to recognize what is happening at a subway station. Conventional recognition systems require intermediate models of human behavior, such as geometrical models. However, it is hard to calibrate many cameras with enough accuracy to use this framework. Therefore, we propose a memory-based method that does not require any calibration or a priori models. The developed system recognizes "people are walking toward a ticket gate," "people are going down the stairs," and so on. In addition, we have developed a method to select what information is necessary to make these discriminations. This method, which is analogous to an aspect of attention, reduces the computation involved in learning support vector machines to about 0.5% of its original value and increases classification accuracy by 2 to 23%.
机译:本研究的目标是开发通过环境智能支持人类活动的系统。这些系统可能包括与传感器的设置中的人交互的代理。作为第一步,我们开发了一个带有12个全向相机的分布式视觉系统,以识别地铁站发生的事情。常规识别系统需要人类行为的中间模型,例如几何模型。但是,很难校准许多相机,可以使用足够的准确性来使用此框架。因此,我们提出了一种基于内存的方法,不需要任何校准或先验模型。发达的系统识别“人们走向售票门”,“人们走下楼梯,”等等。此外,我们开发了一种选择所需信息来制定这些鉴别的方法。这种类似于关注的方面的方法,减少了学习支持向量机中所涉及的计算到其原始值的约0.5%,并将分类精度提高2%至23%。

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