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Main Authors: Ma, Marcus, Prescott, Jordan, Zhou, Emily, Feng, Tiantian, Avramidis, Kleanthis, Toth, Gabor Mihaly, Narayanan, Shrikanth
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.12534
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author Ma, Marcus
Prescott, Jordan
Zhou, Emily
Feng, Tiantian
Avramidis, Kleanthis
Toth, Gabor Mihaly
Narayanan, Shrikanth
author_facet Ma, Marcus
Prescott, Jordan
Zhou, Emily
Feng, Tiantian
Avramidis, Kleanthis
Toth, Gabor Mihaly
Narayanan, Shrikanth
contents The relationship between emotional expression and eye movement is well-documented, with literature establishing gaze patterns are reliable indicators of emotion. However, most studies utilize specialized, high-resolution eye-tracking equipment, limiting the potential reach of findings. We investigate how eye movement can be used to predict multimodal markers of emotional expression from naturalistic, low-resolution videos. We utilize a collection of video interviews from the USC Shoah Foundation's Visual History Archive with Holocaust survivors as they recount their experiences in the Auschwitz concentration camp. Inspired by pretraining methods on language models, we develop a novel gaze detection model that uses self-supervised eye movement reconstruction that can effectively leverage unlabeled video. We use this model's encoder embeddings to fine-tune models on two downstream tasks related to emotional expression. The first is aligning eye movement with directional emotion estimates from speech. The second task is using eye gaze as a predictor of three momentary manifestations of emotional behaviors: laughing, crying/sobbing, and sighing. We find our new model is predictive of emotion outcomes and observe a positive correlation between pretraining performance and emotion processing performance for both experiments. We conclude self-supervised eye movement reconstruction is an effective method for encoding the affective signal they carry.
format Preprint
id arxiv_https___arxiv_org_abs_2601_12534
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Encoding Emotion Through Self-Supervised Eye Movement Reconstruction
Ma, Marcus
Prescott, Jordan
Zhou, Emily
Feng, Tiantian
Avramidis, Kleanthis
Toth, Gabor Mihaly
Narayanan, Shrikanth
Computer Vision and Pattern Recognition
Artificial Intelligence
The relationship between emotional expression and eye movement is well-documented, with literature establishing gaze patterns are reliable indicators of emotion. However, most studies utilize specialized, high-resolution eye-tracking equipment, limiting the potential reach of findings. We investigate how eye movement can be used to predict multimodal markers of emotional expression from naturalistic, low-resolution videos. We utilize a collection of video interviews from the USC Shoah Foundation's Visual History Archive with Holocaust survivors as they recount their experiences in the Auschwitz concentration camp. Inspired by pretraining methods on language models, we develop a novel gaze detection model that uses self-supervised eye movement reconstruction that can effectively leverage unlabeled video. We use this model's encoder embeddings to fine-tune models on two downstream tasks related to emotional expression. The first is aligning eye movement with directional emotion estimates from speech. The second task is using eye gaze as a predictor of three momentary manifestations of emotional behaviors: laughing, crying/sobbing, and sighing. We find our new model is predictive of emotion outcomes and observe a positive correlation between pretraining performance and emotion processing performance for both experiments. We conclude self-supervised eye movement reconstruction is an effective method for encoding the affective signal they carry.
title Encoding Emotion Through Self-Supervised Eye Movement Reconstruction
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2601.12534