Qiao Kai, Chen Jian, Wang Linyuan, Zhang Chi, Zeng Lei, Tong Li, Yan Bin
PLA Strategic Support Force Information Engineering University, Zhengzhou, China.
Front Neurosci. 2019 Jul 9;13:692. doi: 10.3389/fnins.2019.00692. eCollection 2019.
Recently, visual encoding and decoding based on functional magnetic resonance imaging (fMRI) has had many achievements with the rapid development of deep network computation. In the human vision system, when people process the perceived visual content, visual information flows from primary visual cortices to high-level visual cortices and also vice versa based on the bottom-up and top-down manners, respectively. Inspired by the bidirectional information flows, we proposed a bidirectional recurrent neural network (BRNN)-based method to decode the corresponding categories from fMRI data. The forward and backward directions in the BRNN module characterized the bottom-up and top-down manners, respectively. The proposed method regarded the selected voxels in each visual area (V1, V2, V3, V4, and LO) as one node of the space sequence and fed it into the BRNN module, then combined the output of the BRNN module to decode categories with the subsequent fully connected softmax layer. This new method can use the hierarchical information representations and bidirectional information flows in human visual cortices more efficiently. Experiments demonstrated that our method could improve the accuracy of the three-level category decoding. Comparative analysis validated and revealed that correlative representations of categories were included in visual cortices because of the bidirectional information flows, in addition to the hierarchical, distributed, and complementary representations that accorded with previous studies.
近年来,随着深度网络计算的快速发展,基于功能磁共振成像(fMRI)的视觉编码和解码取得了许多成果。在人类视觉系统中,当人们处理感知到的视觉内容时,视觉信息分别基于自下而上和自上而下的方式从初级视觉皮层流向高级视觉皮层,反之亦然。受双向信息流的启发,我们提出了一种基于双向循环神经网络(BRNN)的方法,用于从fMRI数据中解码相应的类别。BRNN模块中的正向和反向分别表征了自下而上和自上而下的方式。所提出的方法将每个视觉区域(V1、V2、V3、V4和LO)中选定的体素视为空间序列的一个节点,并将其输入到BRNN模块中,然后结合BRNN模块的输出,通过后续的全连接softmax层解码类别。这种新方法可以更有效地利用人类视觉皮层中的分层信息表示和双向信息流。实验表明,我们的方法可以提高三级类别解码的准确率。对比分析验证并揭示,除了与先前研究一致的分层、分布式和互补表示外,由于双向信息流,视觉皮层中还包含类别的相关表示。