Reconstructing observed images from fMRI brain recordings is challenging. Unfortunately, acquiring sufficient "labeled" pairs of {Image, fMRI} (i.e., images with their corresponding fMRI responses) to span the huge space of natural images is prohibitive for many reasons. We present a novel approach which, in addition to the scarce labeled data (training pairs), allows to train fMRI-to-image reconstruction networks also on "unlabeled" data (i.e., images without fMRI recording, and fMRI recording without images). The proposed model utilizes both an Encoder network (image-to-fMRI) and a Decoder network (fMRI-to-image). Concatenating these two networks back-to-back (Encoder-Decoder & Decoder-Encoder) allows augmenting the training with both types of unlabeled data. Importantly, it allows training on the unlabeled test-fMRI data. This self-supervision adapts the reconstruction network to the new input test-data, despite its deviation from the statistics of the scarce training data.

From voxels to pixels and back: Self-supervision in natural-image reconstruction from fMRI / Beliy, R; Gaziv, G; Hoogi, A; Strappini, F; Golan, T; Irani, M. - 32:(2019). (Intervento presentato al convegno Thirty-third Conference on Neural Information Processing Systems (NeurIPS | 2019 ) tenutosi a Vancouver (Canada)).

From voxels to pixels and back: Self-supervision in natural-image reconstruction from fMRI

Strappini, F;
2019

Abstract

Reconstructing observed images from fMRI brain recordings is challenging. Unfortunately, acquiring sufficient "labeled" pairs of {Image, fMRI} (i.e., images with their corresponding fMRI responses) to span the huge space of natural images is prohibitive for many reasons. We present a novel approach which, in addition to the scarce labeled data (training pairs), allows to train fMRI-to-image reconstruction networks also on "unlabeled" data (i.e., images without fMRI recording, and fMRI recording without images). The proposed model utilizes both an Encoder network (image-to-fMRI) and a Decoder network (fMRI-to-image). Concatenating these two networks back-to-back (Encoder-Decoder & Decoder-Encoder) allows augmenting the training with both types of unlabeled data. Importantly, it allows training on the unlabeled test-fMRI data. This self-supervision adapts the reconstruction network to the new input test-data, despite its deviation from the statistics of the scarce training data.
2019
Thirty-third Conference on Neural Information Processing Systems (NeurIPS | 2019 )
fMRI, encoding, decoding, visual task, self-supervision
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
From voxels to pixels and back: Self-supervision in natural-image reconstruction from fMRI / Beliy, R; Gaziv, G; Hoogi, A; Strappini, F; Golan, T; Irani, M. - 32:(2019). (Intervento presentato al convegno Thirty-third Conference on Neural Information Processing Systems (NeurIPS | 2019 ) tenutosi a Vancouver (Canada)).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1644493
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