PhysiologicAILab/FactorizePhys
FactorizePhys: Matrix Factorization for Multidimensional Attention in Remote Physiological Sensing [NeurIPS 2024]
This project helps researchers and engineers accurately measure blood volume pulse (BVP) signals from standard video recordings. It takes video frames as input and produces estimated BVP signals, enabling non-contact physiological monitoring. This is for professionals working in healthcare technology, remote sensing, or human-computer interaction who need precise physiological data without physical sensors.
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Use this if you need to extract highly accurate blood volume pulse signals from video recordings, especially when dealing with complex spatial-temporal data.
Not ideal if your primary goal is real-time, ultra-low latency monitoring on embedded systems with limited computational resources.
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Python
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Last pushed
Aug 12, 2025
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