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A Retinotopic Spiking Neural Network System for Accurate Recognition of Moving Objects Using NeuCube and Dynamic Vision Sensors

机译:使用NeuCube和动态视觉传感器精确识别运动物体的视网膜尖峰神经网络系统

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摘要

This paper introduces a new system for dynamic visual recognition that combines bio-inspired hardware with a brain-like spiking neural network. The system is designed to take data from a dynamic vision sensor (DVS) that simulates the functioning of the human retina by producing an address event output (spike trains) based on the movement of objects. The system then convolutes the spike trains and feeds them into a brain-like spiking neural network, called NeuCube, which is organized in a three-dimensional manner, representing the organization of the primary visual cortex. Spatio-temporal patterns of the data are learned during a deep unsupervised learning stage, using spike-timing-dependent plasticity. In a second stage, supervised learning is performed to train the network for classification tasks. The convolution algorithm and the mapping into the network mimic the function of retinal ganglion cells and the retinotopic organization of the visual cortex. The NeuCube architecture can be used to visualize the deep connectivity inside the network before, during, and after training and thereby allows for a better understanding of the learning processes. The method was tested on the benchmark MNIST-DVS dataset and achieved a classification accuracy of 92.90%. The paper discusses advantages and limitations of the new method and concludes that it is worth exploring further on different datasets, aiming for advances in dynamic computer vision and multimodal systems that integrate visual, aural, tactile, and other kinds of information in a biologically plausible way.
机译:本文介绍了一种新的动态视觉识别系统,该系统将受生物启发的硬件与类似大脑的尖刺神经网络相结合。该系统旨在从动态视觉传感器(DVS)获取数据,该传感器通过根据对象的移动产生地址事件输出(峰值火车)来模拟人类视网膜的功能。然后,系统对峰值序列进行卷积,然后将其馈送到称为N​​euCube的类似于大脑的峰值神经网络,该网络以三维方式组织,代表了主要视觉皮层的组织。数据的时空模式是在深度无监督的学习阶段中使用依赖于时序的可塑性进行学习的。在第二阶段,执行监督学习以训练网络进行分类任务。卷积算法和到网络的映射模仿了视网膜神经节细胞的功能和视觉皮层的视网膜组织。 NeuCube体系结构可用于在培训之前,期间和之后可视化网络内部的深度连接,从而可以更好地了解学习过程。该方法在基准MNIST-DVS数据集上进行了测试,分类精度为92.90%。本文讨论了这种新方法的优点和局限性,并得出结论,值得在不同的数据集上进行进一步的探索,以期在动态计算机视觉和以视觉上可行的方式整合视觉,听觉,触觉和其他类型信息的多模式系统方面取得进展。

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