egoPPG: Heart Rate Estimation from Eye-Tracking Cameras in Egocentric Systems to Benefit Downstream Vision Tasks
Bj\"orn Braun, Rayan Armani, Manuel Meier, Max Moebus, Christian Holz

TL;DR
egoPPG introduces a novel method to estimate heart rate from eye-tracking cameras in egocentric systems, enhancing understanding of physiological states to improve downstream vision tasks and user modeling.
Contribution
The paper presents PulseFormer, a new approach for extracting heart rate from eye-tracking videos, and demonstrates its benefits for activity proficiency estimation in egocentric vision.
Findings
PulseFormer achieves MAE of 7.67 bpm in HR estimation.
Estimated HR improves proficiency estimation by 14%.
The dataset includes 13+ hours of diverse activity data.
Abstract
Egocentric vision systems aim to understand the spatial surroundings and the wearer's behavior inside it, including motions, activities, and interactions. We argue that egocentric systems must additionally detect physiological states to capture a person's attention and situational responses, which are critical for context-aware behavior modeling. In this paper, we propose egoPPG, a novel vision task for egocentric systems to recover a person's cardiac activity to aid downstream vision tasks. We introduce PulseFormer, a method to extract heart rate as a key indicator of physiological state from the eye tracking cameras on unmodified egocentric vision systems. PulseFormer continuously estimates the photoplethysmogram (PPG) from areas around the eyes and fuses motion cues from the headset's inertial measurement unit to track HR values. We demonstrate egoPPG's downstream benefit for a key…
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