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Multi-Task Temporal Shift Attention Networks for On-Device Contactless Vitals Measurement

About

Telehealth and remote health monitoring have become increasingly important during the SARS-CoV-2 pandemic and it is widely expected that this will have a lasting impact on healthcare practices. These tools can help reduce the risk of exposing patients and medical staff to infection, make healthcare services more accessible, and allow providers to see more patients. However, objective measurement of vital signs is challenging without direct contact with a patient. We present a video-based and on-device optical cardiopulmonary vital sign measurement approach. It leverages a novel multi-task temporal shift convolutional attention network (MTTS-CAN) and enables real-time cardiovascular and respiratory measurements on mobile platforms. We evaluate our system on an Advanced RISC Machine (ARM) CPU and achieve state-of-the-art accuracy while running at over 150 frames per second which enables real-time applications. Systematic experimentation on large benchmark datasets reveals that our approach leads to substantial (20%-50%) reductions in error and generalizes well across datasets.

Xin Liu, Josh Fromm, Shwetak Patel, Daniel McDuff• 2020

Related benchmarks

TaskDatasetResultRank
Heart Rate estimationUBFC
MAE0.9
40
Heart Rate estimationUBFC-rPPG (test)
MAE2.285
38
Pulse Rate EstimationUBFC-rPPG Intra-dataset
MAE (BPM)1.7
36
Heart Rate estimationPURE
MAE2.23
33
Pulse Rate EstimationPURE Intra-dataset
MAE (bpm)2.48
25
Infant respiration estimationAIR-400 1.0 (six-fold subject-wise cross-val)
MAE4.23
24
Pulse Rate EstimationMMPD
MAE9.71
22
Heart Rate estimationAFRL All Tasks
MAE1.12
17
Heart Rate estimationMMSE-HR
MAE (BPM)2.55
17
Pulse Rate EstimationUBFC-rPPG to PURE (test)
MAE (BPM)3.69
14
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