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Spiking-Leaf: A Learnable Auditory Front-End for Spiking Neural Networks

Zeyang Song, Jibin Wu, Malu Zhang, Mike Zheng Shou, Haizhou Li

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Abstract

Brain-inspired spiking neural networks (SNNs) have demonstrated great potential for temporal signal processing. However, their performance in speech processing remains limited due to the lack of an effective auditory front-end. To address this limitation, we introduce Spiking-LEAF, a learnable auditory front-end meticulously designed for SNN-based speech processing. Spiking-LEAF combines a learnable filter bank with a novel two-compartment spiking neuron model called IHC-LIF. The IHC-LIF neurons draw inspiration from the structure of inner hair cells (IHC) and they leverage segregated dendritic and somatic compartments to effectively capture multi-scale temporal dynamics of speech signals. Additionally, the IHC-LIF neurons incorporate the lateral feedback mechanism along with spike regularization loss to enhance spike encoding efficiency. On keyword spotting and speaker identification tasks, the proposed Spiking-LEAF outperforms both SOTA spiking auditory front-ends and conventional real-valued acoustic features in terms of classification accuracy, noise robustness, and encoding efficiency.

Topics & Concepts

Spiking neural networkComputer scienceSpeech recognitionRobustness (evolution)Front and back endsSpike sortingFilter bankPattern recognition (psychology)Artificial intelligenceArtificial neural networkFilter (signal processing)Computer visionBiologyCluster analysisGeneOperating systemBiochemistryAdvanced Memory and Neural ComputingSpeech and Audio ProcessingNeural dynamics and brain function
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