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Progress Towards Decoding Visual Imagery via fNIRS

11 June 2024
Michel Adamic
Wellington Avelino
Anna M. Brandenberger
Bryan Chiang
Hunter Davis
Stephen Fay
Andrew Gregory
Aayush Gupta
Raphael Hotter
Grace Jiang
Fiona Leng
Stephen Polcyn
Thomas Ribeiro
Paul S. Scotti
Michelle Wang
Marley Xiong
Jonathan Xu
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Abstract

We demonstrate the possibility of reconstructing images from fNIRS brain activity and start building a prototype to match the required specs. By training an image reconstruction model on downsampled fMRI data, we discovered that cm-scale spatial resolution is sufficient for image generation. We obtained 71% retrieval accuracy with 1-cm resolution, compared to 93% on the full-resolution fMRI, and 20% with 2-cm resolution. With simulations and high-density tomography, we found that time-domain fNIRS can achieve 1-cm resolution, compared to 2-cm resolution for continuous-wave fNIRS. Lastly, we share designs for a prototype time-domain fNIRS device, consisting of a laser driver, a single photon detector, and a time-to-digital converter system.

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