Litcius/Paper detail

A Bio-Inspired Spiking Attentional Neural Network for Attentional Selection in the Listening Brain

Siqi Cai, Peiwen Li, Haizhou Li

2023IEEE Transactions on Neural Networks and Learning Systems41 citationsDOIOpen Access PDF

Abstract

Humans show a remarkable ability in solving the cocktail party problem. Decoding auditory attention from the brain signals is a major step toward the development of bionic ears emulating human capabilities. Electroencephalography (EEG)-based auditory attention detection (AAD) has attracted considerable interest recently. Despite much progress, the performance of traditional AAD decoders remains to be improved, especially in low-latency settings. State-of-the-art AAD decoders based on deep neural networks generally lack the intrinsic temporal coding ability in biological networks. In this study, we first propose a bio-inspired spiking attentional neural network, denoted as BSAnet, for decoding auditory attention. BSAnet is capable of exploiting the temporal dynamics of EEG signals using biologically plausible neurons and an attentional mechanism. Experiments on two publicly available datasets confirm the superior performance of BSAnet over other state-of-the-art systems across various evaluation conditions. Moreover, BSAnet imitates realistic brain-like information processing, through which we show the advantage of brain-inspired computational models.

Topics & Concepts

Computer scienceElectroencephalographyDecoding methodsNeural decodingArtificial neural networkSelective auditory attentionLatency (audio)Spiking neural networkArtificial intelligenceMechanism (biology)Brain activity and meditationActive listeningSelective attentionNeuroscienceSpeech recognitionCognitionPsychologyCommunicationAlgorithmPhilosophyEpistemologyTelecommunicationsEEG and Brain-Computer InterfacesAdvanced Memory and Neural ComputingNeural dynamics and brain function