Yi-Jun Zhang, Zhao-Fei Yu, Jian. K. Liu, Tie-Jun Huang. Neural Decoding of Visual Information Across Different Neural Recording Modalities and Approaches[J]. Machine Intelligence Research, 2022, 19(5): 350-365. DOI: 10.1007/s11633-022-1335-2
Citation: Yi-Jun Zhang, Zhao-Fei Yu, Jian. K. Liu, Tie-Jun Huang. Neural Decoding of Visual Information Across Different Neural Recording Modalities and Approaches[J]. Machine Intelligence Research, 2022, 19(5): 350-365. DOI: 10.1007/s11633-022-1335-2

Neural Decoding of Visual Information Across Different Neural Recording Modalities and Approaches

  • Vision plays a peculiar role in intelligence. Visual information, forming a large part of the sensory information, is fed into the human brain to formulate various types of cognition and behaviours that make humans become intelligent agents. Recent advances have led to the development of brain-inspired algorithms and models for machine vision. One of the key components of these methods is the utilization of the computational principles underlying biological neurons. Additionally, advanced experimental neuroscience techniques have generated different types of neural signals that carry essential visual information. Thus, there is a high demand for mapping out functional models for reading out visual information from neural signals. Here, we briefly review recent progress on this issue with a focus on how machine learning techniques can help in the development of models for contending various types of neural signals, from fine-scale neural spikes and single-cell calcium imaging to coarse-scale electroencephalography (EEG) and functional magnetic resonance imaging recordings of brain signals.
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