Litcius/Paper detail

The brain-inspired decoder for natural visual image reconstruction

Wenyi Li, Shengjie Zheng, Yufan Liao, Rongqi Hong, Chenggang He, Wei‐Liang Chen, Chunshan Deng, Xiaojian Li

2023Frontiers in Neuroscience11 citationsDOIOpen Access PDF

Abstract

The visual system provides a valuable model for studying the working mechanisms of sensory processing and high-level consciousness. A significant challenge in this field is the reconstruction of images from decoded neural activity, which could not only test the accuracy of our understanding of the visual system but also provide a practical tool for solving real-world problems. Although recent advances in deep learning have improved the decoding of neural spike trains, little attention has been paid to the underlying mechanisms of the visual system. To address this issue, we propose a deep learning neural network architecture that incorporates the biological properties of the visual system, such as receptive fields, to reconstruct visual images from spike trains. Our model outperforms current models and has been evaluated on different datasets from both retinal ganglion cells (RGCs) and the primary visual cortex (V1) neural spikes. Our model demonstrated the great potential of brain-inspired algorithms to solve a challenge that our brain solves.

Topics & Concepts

Computer scienceVisual cortexArtificial intelligenceReceptive fieldHuman visual system modelArtificial neural networkSensory systemPattern recognition (psychology)NeuroscienceImage (mathematics)PsychologyNeural dynamics and brain functionVisual perception and processing mechanismsCCD and CMOS Imaging Sensors