CVNCFeb 23, 2019

A visual encoding model based on deep neural networks and transfer learning

arXiv:1902.08793v134 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of improving brain-machine interface techniques for vision, though it is incremental as it builds on existing methods by replacing linear mappings with nonlinear ones.

The authors tackled the challenge of predicting brain activity from visual stimuli by introducing a visual encoding framework that uses transfer learning from a pre-trained deep neural network and a nonlinear mapping, achieving significant prediction accuracy for over 20% of voxels in early visual areas.

Background: Building visual encoding models to accurately predict visual responses is a central challenge for current vision-based brain-machine interface techniques. To achieve high prediction accuracy on neural signals, visual encoding models should include precise visual features and appropriate prediction algorithms. Most existing visual encoding models employ hand-craft visual features (e.g., Gabor wavelets or semantic labels) or data-driven features (e.g., features extracted from deep neural networks (DNN)). They also assume a linear mapping between feature representation to brain activity. However, it remains unknown whether such linear mapping is sufficient for maximizing prediction accuracy. New Method: We construct a new visual encoding framework to predict cortical responses in a benchmark functional magnetic resonance imaging (fMRI) dataset. In this framework, we employ the transfer learning technique to incorporate a pre-trained DNN (i.e., AlexNet) and train a nonlinear mapping from visual features to brain activity. This nonlinear mapping replaces the conventional linear mapping and is supposed to improve prediction accuracy on brain activity. Results: The proposed framework can significantly predict responses of over 20% voxels in early visual areas (i.e., V1-lateral occipital region, LO) and achieve unprecedented prediction accuracy. Comparison with Existing Methods: Comparing to two conventional visual encoding models, we find that the proposed encoding model shows consistent higher prediction accuracy in all early visual areas, especially in relatively anterior visual areas (i.e., V4 and LO). Conclusions: Our work proposes a new framework to utilize pre-trained visual features and train non-linear mappings from visual features to brain activity.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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