Back to Search Start Over

Decoding Brain Representations by Multimodal Learning of Neural Activity and Visual Features

Authors :
Palazzo, Simone
Spampinato, Concetto
Kavasidis, Isaak
Giordano, Daniela
Schmidt, Joseph
Shah, Mubarak
Publication Year :
2018

Abstract

This work presents a novel method of exploring human brain-visual representations, with a view towards replicating these processes in machines. The core idea is to learn plausible computational and biological representations by correlating human neural activity and natural images. Thus, we first propose a model, EEG-ChannelNet, to learn a brain manifold for EEG classification. After verifying that visual information can be extracted from EEG data, we introduce a multimodal approach that uses deep image and EEG encoders, trained in a siamese configuration, for learning a joint manifold that maximizes a compatibility measure between visual features and brain representations. We then carry out image classification and saliency detection on the learned manifold. Performance analyses show that our approach satisfactorily decodes visual information from neural signals. This, in turn, can be used to effectively supervise the training of deep learning models, as demonstrated by the high performance of image classification and saliency detection on out-of-training classes. The obtained results show that the learned brain-visual features lead to improved performance and simultaneously bring deep models more in line with cognitive neuroscience work related to visual perception and attention.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1810.10974
Document Type :
Working Paper