Decoding Musical Pitch from Human Brain Activity with Automatic Voxel-Wise Whole-Brain FMRI Feature Selection

Vincent K.M. Cheung, Yueh-Po Peng, Jing-Hua Lin,Li Su

ICASSP 2023 - 2023 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)(2023)

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摘要
Decoding models seek to infer stimulus or task information from neural activity and play a central role in brain-computer interfaces. However, the high spatial resolution of fMRI means that the number of available features far exceeds the number of trials in a typical experiment. Although a common approach is to restrict features to a priori-defined regions of interest, related information present in other brain regions are consequently omitted. Here, we propose a two-stage thresholding approach that automatically pools relevant voxels from the whole-brain to enhance decoding performance. Testing on an fMRI dataset of 20 subjects, we show that our approach significantly improves regression performance in decoding musical pitch value by 2-fold compared to restricting voxels to the auditory cortex. We further examine properties of the selected voxels, and compare performance between random forest and convolutional neural network decoders.
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关键词
brain decoding,CNN and random forest,feature selection,fMRI,music information retrieval
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