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BigGAN-based Bayesian Reconstruction of Natural Images from Human Brain Activity

Authors :
Kai Qiao
Li Tong
Chi Zhang
Linyuan Wang
Jian Chen
Bin Yan
Source :
Neuroscience. 444:92-105
Publication Year :
2020
Publisher :
Elsevier BV, 2020.

Abstract

In the visual decoding domain, visually reconstructing presented images given the corresponding human brain activity monitored by functional magnetic resonance imaging (fMRI) is difficult, especially when reconstructing viewed natural images. Visual reconstruction is a conditional image generation on fMRI data and thus generative adversarial network (GAN) for natural image generation is recently introduced for this task. Although GAN-based methods have greatly improved, the fidelity and naturalness of reconstruction are still unsatisfactory due to the small number of fMRI data samples and the instability of GAN training. In this study, we proposed a new GAN-based Bayesian visual reconstruction method (GAN-BVRM) that includes a classifier to decode categories from fMRI data, a pre-trained conditional generator to generate natural images of specified categories, and a set of encoding models and evaluator to evaluate generated images. GAN-BVRM employs the pre-trained generator of the prevailing BigGAN to generate masses of natural images, and selects the images that best matches with the corresponding brain activity through the encoding models as the reconstruction of the image stimuli. In this process, the semantic and detailed contents of reconstruction are controlled by decoded categories and encoding models, respectively. GAN-BVRM used the Bayesian manner to avoid contradiction between naturalness and fidelity from current GAN-based methods and thus can improve the advantages of GAN. Experimental results revealed that GAN-BVRM improves the fidelity and naturalness, that is, the reconstruction is natural and similar to the presented image stimuli.<br />Comment: brain decoding; visual reconstruction; generative adversarial network (GAN); Bayesian framework. under review in Neuroscience of Elsevier

Details

ISSN :
03064522
Volume :
444
Database :
OpenAIRE
Journal :
Neuroscience
Accession number :
edsair.doi.dedup.....60c7f69a289deee2decd3c4926a254d9
Full Text :
https://doi.org/10.1016/j.neuroscience.2020.07.040