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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Neuromorphic Artificial Touch for Categorization of Naturalistic Textures
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Neuromorphic Artificial Touch for Categorization of Naturalistic Textures

机译:神经形态人工触摸用于自然纹理的分类

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摘要

We implemented neuromorphic artificial touch and emulated the firing behavior of mechanoreceptors by injecting the raw outputs of a biomimetic tactile sensor into an Izhikevich neuronal model. Naturalistic textures were evaluated with a passive touch protocol. The resulting neuromorphic spike trains were able to classify ten naturalistic textures ranging from textiles to glass to BioSkin, with accuracy as high as 97%. Remarkably, rather than on firing rate features calculated over the stimulation window, the highest achieved decoding performance was based on the precise spike timing of the neuromorphic output as captured by Victor Purpura distance. We also systematically varied the sliding velocity and the contact force to investigate the role of sensing conditions in categorizing the stimuli via the artificial sensory system. We found that the decoding performance based on the timing of neuromorphic spike events was robust for a broad range of sensing conditions. Being able to categorize naturalistic textures in different sensing conditions, these neurorobotic results pave the way to the use of neuromorphic tactile sensors in future real-life neuroprosthetic applications.
机译:我们通过将仿生触觉传感器的原始输出注入到Izhikevich神经元模型中,实现了神经形态人工触摸并模拟了机械感受器的发射行为。自然纹理通过被动触摸协议进行评估。最终的神经形态钉刺序列能够对十种自然纹理进行分类,从纺织品到玻璃再到BioSkin,准确度高达97%。值得注意的是,获得的最高解码性能不是基于在刺激窗口上计算的发射速率特征,而是基于由Victor Purpura距离捕获的神经形态输出的精确尖峰定时。我们还系统地改变了滑动速度和接触力,以研究感测条件在通过人工感觉系统对刺激进行分类中的作用。我们发现基于神经形态尖峰事件定时的解码性能在广泛的传感条件下都非常可靠。能够在不同的感应条件下对自然纹理进行分类,这些神经机器人学的结果为将来在现实生活中的神经假体应用中使用神经形态触觉传感器铺平了道路。

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