Zero-Shot Neural Decoding with Semi-Supervised Multi-View Embedding

Sensors (Basel). 2023 Aug 3;23(15):6903. doi: 10.3390/s23156903.

Abstract

Zero-shot neural decoding aims to decode image categories, which were not previously trained, from functional magnetic resonance imaging (fMRI) activity evoked when a person views images. However, having insufficient training data due to the difficulty in collecting fMRI data causes poor generalization capability. Thus, models suffer from the projection domain shift problem when novel target categories are decoded. In this paper, we propose a zero-shot neural decoding approach with semi-supervised multi-view embedding. We introduce the semi-supervised approach that utilizes additional images related to the target categories without fMRI activity patterns. Furthermore, we project fMRI activity patterns into a multi-view embedding space, i.e., visual and semantic feature spaces of viewed images to effectively exploit the complementary information. We define several source and target groups whose image categories are very different and verify the zero-shot neural decoding performance. The experimental results demonstrate that the proposed approach rectifies the projection domain shift problem and outperforms existing methods.

Keywords: Bayesian inference; functional magnetic resonance imaging (fMRI); generative model; multi-view learning; neural decoding; probabilistic model; semi-supervised learning; zero-shot learning.