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Automatic Object Recognition Using Combinational Neural Networks in Surveillance Networks

机译:监控网络中使用组合神经网络的自动目标识别

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The level of recognition in humans is very high with less effort even for a multitude of objects in images, despite the fact that the image of the objects may vary with respect to view angle, size, translation and rotation. In this paper, a new scheme called combination neural networks is proposed which uses parallelism between two units in the recognition systems in application to visual sensor (surveillance) networks. The introduction of layered structure is a novel idea based on the concept of cache memory search of the CPU architecture. Objects can even be recognized when they are partially obstructed from views of visual sensors, i.e. partial occlusion due to the network topology of back propagation.
机译:尽管事实上对象的图像可能会随视角,大小,平移和旋转而变化,但即使对于图像中的多个对象,人类的识别水平也非常高,并且工作量较小。在本文中,提出了一种称为组合神经网络的新方案,该方案利用识别系统中两个单元之间的并行性,将其应用于视觉传感器(监视)网络。分层结构的引入是基于CPU体系结构的缓存搜索概念的新颖思想。当对象从视觉传感器的视图中被部分遮挡时,即由于反向传播的网络拓扑而部分遮挡时,甚至可以识别出对象。

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