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A biologically inspired recurrent neural network for sound source recognition incorporating auditory attention

机译:生物启发的递归神经网络,用于听觉关注的声源识别

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In this paper, a human-mimicking model for sound source recognition is presented. It consists of an artificial neural network with three neuron layers (input, middle and output) that are connected by feedback connections between the output and middle layer, on top of feedforward connections from the input to middle and middle to output layers. Learning is accomplished by the model following the Hebb principle, dictating that “cells that fire together, wire together”, with some important alterations, compared to standard Hebbian learning, in order to prevent the model from forgetting previously learned patterns, when learning new ones. In addition, short-term memory is introduced into the model in order to facilitate and guide learning of neuronal synapses (long-term memory). As auditory attention is an essential part of human auditory scene analysis (ASA), it is also indispensable in any computational model mimicking it, and it is shown that different auditory attention mechanism naturally emerge from the neuronal behaviour as implemented in the model described in this paper. The learning behavior of the model is further investigated in the context of an urban sonic environment, and the importance of short-term memory in this process is demonstrated. Finally, the effectiveness of the model is evaluated by comparing model output on presented sound recordings to a human expert listeners evaluation of the same fragments.
机译:本文提出了一种模仿人的声源识别模型。它由一个具有三个神经元层(输入,中间层和输出层)的人工神经网络组成,这些神经元层通过输出层和中间层之间的反馈连接而连接,位于从输入层到中间层,中间层和输出层的前馈连接之上。通过遵循Hebb原理的模型来完成学习,指示与标准的Hebbian学习相比,“细胞一起发射,连接在一起”进行了一些重大更改,以防止模型在学习新模式时忘记先前学习的模式。 。此外,为了促进和指导神经元突触的学习,将短期记忆引入模型(长期记忆)。由于听觉注意是人类听觉场景分析(ASA)的重要组成部分,因此在模仿它的任何计算模型中也都是必不可少的,并且显示出不同的听觉注意机制自然会从神经元行为中产生,如本文所述的模型所实现的纸。在城市声环境中进一步研究了该模型的学习行为,并证明了在此过程中短期记忆的重要性。最后,通过将呈现的录音上的模型输出与相同片段的人类专业听众评估进行比较,来评估模型的有效性。

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