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EVENT-BASED CLASSIFICATION OF FEATURES IN A RECONFIGURABLE AND TEMPORALLY CODED CONVOLUTIONAL SPIKING NEURAL NETWORK

机译:基于事件的可重构时间编码卷积尖峰神经网络特征分类

摘要

Embodiments of the present invention provides a system and method of learning and classifying features to identify objects in images using a temporally coded deep spiking neural network, a classifying method by using a reconfigurable spiking neural network device or software comprising configuration logic, a plurality of reconfigurable spiking neurons and a second plurality of synapses. The spiking neural network device or software further comprises a plurality of user-selectable convolution and pooling engines. Each fully connected and convolution engine is capable of learning features, thus producing a plurality of feature map layers corresponding to a plurality of regions respectively, each of the convolution engines being used for obtaining a response of a neuron in the corresponding region. The neurons are modeled as Integrate and Fire neurons with a non-linear time constant, forming individual integrating threshold units with a spike output, eliminating the need for multiplication and addition of floating-point numbers.
机译:本发明的实施例提供了一种使用时间编码的深脉冲神经网络学习和分类特征以识别图像中对象的系统和方法,一种使用可重构脉冲神经网络设备或软件进行分类的方法,该设备或软件包括配置逻辑、多个可重构脉冲神经元和第二多个突触。该尖峰神经网络设备或软件还包括多个用户可选择的卷积和池引擎。每个完全连接的卷积引擎能够学习特征,从而产生分别对应于多个区域的多个特征映射层,每个卷积引擎用于获得对应区域中神经元的响应。神经元被建模为具有非线性时间常数的积分和激发神经元,形成具有尖峰输出的单个积分阈值单元,消除了浮点数的乘法和加法需要。

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