Infrared Technology, Volume. 46, Issue 8, 923(2024)
fNIRS Signal Motion Correction Algorithm Based on Convolutional Self-Coding
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LI Yongkang, LI Xi, WANG Qiwen, XU Qi, LI Xiaoou. fNIRS Signal Motion Correction Algorithm Based on Convolutional Self-Coding[J]. Infrared Technology, 2024, 46(8): 923