More Than Meets the Eye: Self-Supervised Depth Reconstruction From Brain Activity
Guy Gaziv, Michal Irani

TL;DR
This paper demonstrates that dense 3D depth maps of natural images can be reconstructed directly from fMRI brain recordings using self-supervised learning, extending brain decoding capabilities beyond 2D image reconstruction.
Contribution
It introduces a novel method for direct depth map reconstruction from fMRI data, combining paired and unpaired data with self-supervised training and a new depth perceptual similarity metric.
Findings
Depth prediction from fMRI outperforms indirect methods.
Early visual cortex areas are most informative for depth reconstruction.
Self-supervised cycle training enhances depth reconstruction accuracy.
Abstract
In the past few years, significant advancements were made in reconstruction of observed natural images from fMRI brain recordings using deep-learning tools. Here, for the first time, we show that dense 3D depth maps of observed 2D natural images can also be recovered directly from fMRI brain recordings. We use an off-the-shelf method to estimate the unknown depth maps of natural images. This is applied to both: (i) the small number of images presented to subjects in an fMRI scanner (images for which we have fMRI recordings - referred to as "paired" data), and (ii) a very large number of natural images with no fMRI recordings ("unpaired data"). The estimated depth maps are then used as an auxiliary reconstruction criterion to train for depth reconstruction directly from fMRI. We propose two main approaches: Depth-only recovery and joint image-depth RGBD recovery. Because the number of…
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Taxonomy
TopicsAdvanced Vision and Imaging · Image Processing Techniques and Applications · Cell Image Analysis Techniques
