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Composer classification based on temporal coding in adaptive spiking neural networks

机译:自适应尖峰神经网络中基于时间编码的作曲家分类

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We develop a spiking neural network (SNN) based implementation of a feature based on melodic interval prevalence for composer classification of a musical composition. The network has an adaptive spike-time based weight update rule which accurately captures the classification feature. Compared to the non-neural network based baseline implementation, the SNN implementation has a performance of 95.4%. When the songs are corrupted by gaussian additive noise, the relative degradation in performance of our algorithm is lesser than what is observed in the baseline algorithm.We also demonstrate that the performance degradation of our algorithm is minimal over a wide range of perturbations in the internal parameters of our circuit, demonstrating the power of adaptive SNNs to perform complex discrimination tasks in a fault-tolerant manner.
机译:我们针对音乐作品的作曲家分类,基于旋律间隔流行度,开发了基于尖峰神经网络(SNN)的功能实现。该网络具有自适应的基于尖峰时间的权重更新规则,该规则可准确捕获分类特征。与基于非神经网络的基准实施相比,SNN实施的性能为95.4%。当歌曲被高斯加性噪声破坏时,我们的算法的性能相对下降要比基线算法中观察到的要小。我们还证明,在内部的广泛扰动下,我们算法的性能下降是最小的我们的电路的参数,证明了自适应SNN以容错的方式执行复杂的判别任务的能力。

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