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Skimming Digits: Neuromorphic Classification of Spike-Encoded Images

机译:略读数字:穗编码图像的神经形态分类

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The growing demands placed upon the field of computer vision have renewed the focus on alternative visual scene representations and processing paradigms. Silicon retinea provide an alternative means of imaging the visual environment, and produce frame-free spatio-temporal data. This paper presents an investigation into event-based digit classification using N-MNIST, a neuromorphic dataset created with a silicon retina, and the Synaptic Kernel Inverse Method (SKIM), a learning method based on principles of dendritic computation. As this work represents the first large-scale and multi-class classification task performed using the SKIM network, it explores different training patterns and output determination methods necessary to extend the original SKIM method to support multi-class problems. Making use of SKIM networks applied to real-world datasets, implementing the largest hidden layer sizes and simultaneously training the largest number of output neurons, the classification system achieved a best-case accuracy of 92.87% for a network containing 10,000 hidden layer neurons. These results represent the highest accuracies achieved against the dataset to date and serve to validate the application of the SKIM method to event-based visual classification tasks. Additionally, the study found that using a square pulse as the supervisory training signal produced the highest accuracy for most output determination methods, but the results also demonstrate that an exponential pattern is better suited to hardware implementations as it makes use of the simplest output determination method based on the maximum value.
机译:对计算机视觉领域的日益增长的需求使人们重新关注替代视觉场景表示和处理范例。 Retinea硅提供了一种对视觉环境进行成像的替代方法,并可以生成无帧的时空数据。本文介绍了使用N-MNIST(使用硅视网膜创建的神经形态数据集)以及基于树突计算原理的学习方法突触核逆方法(SKIM)对基于事件的数字分类的研究。由于这项工作代表了使用SKIM网络执行的第一个大规模多类别分类任务,因此它探索了扩展原始SKIM方法以支持多类别问题所需的不同训练模式和输出确定方法。通过将SKIM网络应用于现实世界的数据集,实现最大的隐藏层大小并同时训练最大数量的输出神经元,分类系统在包含10,000个隐藏层神经元的网络中实现了92.87%的最佳情况精度。这些结果代表了迄今为止针对数据集获得的最高准确性,并有助于验证SKIM方法在基于事件的视觉分类任务中的应用。此外,研究发现,对于大多数输出​​确定方法,使用方波作为监督训练信号可产生最高的精度,但结果也表明,指数模式因使用了最简单的输出确定方法而更适合于硬件实现。根据最大值。

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