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Video surveillance at an industrial environment using an address event vision sensor: Comparative between two different video sensor based on a bioinspired retina

机译:使用地址事件视觉传感器在工业环境下进行视频监视:基于生物启发性视网膜的两种不同视频传感器之间的比较

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摘要

Nowadays we live in very industrialization world that turns worried about surveillance and with lots of occupational hazards. The aim of this paper is to supply a surveillance video system to use at ultra fast industrial environments. We present an exhaustive timing analysis and comparative between two different Address Event Representation (AER) retinas, one with 64×64 pixel and the other one with 128×128 pixel in order to know the limits of them. Both are spike based image sensors that mimic the human retina and designed and manufactured by Delbruck's lab. Two different scenarios are presented in order to achieve the maximum frequency of light changes for a pixel sensor and the maximum frequency of requested pixel addresses on the AER output. Results obtained are 100 Hz and 1.88 MHz at each case for the 64×64 retina and peaks of 1.3 KHz and 8.33 MHz for the 128×128 retina. We have tested the upper spin limit of an ultra fast industrial machine and found it to be approximately 6000 rpm for the first retina and no limit achieve at top rpm for the second retina. It has been tested that in cases with high light contrast no AER data is lost.
机译:如今,我们生活在一个非常工业化的世界中,这个世界开始担心监视和许多职业危害。本文的目的是提供一种用于超快速工业环境的监视视频系统。我们提供详尽的时序分析,并比较两个不同的地址事件表示(AER)视网膜,一个视网膜具有64×64像素,另一个具有128×128像素,以了解它们的局限性。两者都是基于尖峰的图像传感器,它们模仿人类的视网膜,并由Delbruck的实验室设计和制造。为了实现像素传感器的最大光变化频率和AER输出上请求的像素地址的最大频率,提出了两种不同的方案。在每种情况下,对于64×64视网膜,结果均为100 Hz和1.88 MHz;对于128×128视网膜,结果为1.3 KHz和8.33 MHz的峰值。我们已经测试了超快工业机器的旋转上限,发现第一视网膜的旋转上限约为6000 rpm,第二视网膜的最高旋转上限没有达到上限。经测试,在高对比度的情况下,不会丢失AER数据。

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