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Papers/EfficientPhys: Enabling Simple, Fast and Accurate Camera-B...

EfficientPhys: Enabling Simple, Fast and Accurate Camera-Based Vitals Measurement

Xin Liu, Brian L. Hill, Ziheng Jiang, Shwetak Patel, Daniel McDuff

2021-10-09Photoplethysmography (PPG) heart rate estimationFace Detection
PaperPDF

Abstract

Camera-based physiological measurement is a growing field with neural models providing state-the-art-performance. Prior research have explored various "end-to-end" models; however these methods still require several preprocessing steps. These additional operations are often non-trivial to implement making replication and deployment difficult and can even have a higher computational budget than the "core" network itself. In this paper, we propose two novel and efficient neural models for camera-based physiological measurement called EfficientPhys that remove the need for face detection, segmentation, normalization, color space transformation or any other preprocessing steps. Using an input of raw video frames, our models achieve strong performance on three public datasets. We show that this is the case whether using a transformer or convolutional backbone. We further evaluate the latency of the proposed networks and show that our most light weight network also achieves a 33% improvement in efficiency.

Results

TaskDatasetMetricValueModel
Electrocardiography (ECG)UBFC-rPPGMAE1.14EfficientPhys-C
Electrocardiography (ECG)UBFC-rPPGPearson Correlation0.99EfficientPhys-C
Electrocardiography (ECG)UBFC-rPPGRMSE1.81EfficientPhys-C
Electrocardiography (ECG)UBFC-rPPGMAE2.08EfficientPhys-T1
Electrocardiography (ECG)UBFC-rPPGPearson Correlation0.96EfficientPhys-T1
Electrocardiography (ECG)UBFC-rPPGRMSE4.91EfficientPhys-T1
Electrocardiography (ECG)MMSE-HRMAE3.04EfficientPhys-T1
Electrocardiography (ECG)MMSE-HRPearson Correlation0.92EfficientPhys-T1
Electrocardiography (ECG)MMSE-HRRMSE5.91EfficientPhys-T1
Electrocardiography (ECG)MMSE-HRMAE3.48EfficientPhys-C
Electrocardiography (ECG)MMSE-HRPearson Correlation0.86EfficientPhys-C
Electrocardiography (ECG)MMSE-HRRMSE7.21EfficientPhys-C
ECG ClassificationUBFC-rPPGMAE1.14EfficientPhys-C
ECG ClassificationUBFC-rPPGPearson Correlation0.99EfficientPhys-C
ECG ClassificationUBFC-rPPGRMSE1.81EfficientPhys-C
ECG ClassificationUBFC-rPPGMAE2.08EfficientPhys-T1
ECG ClassificationUBFC-rPPGPearson Correlation0.96EfficientPhys-T1
ECG ClassificationUBFC-rPPGRMSE4.91EfficientPhys-T1
ECG ClassificationMMSE-HRMAE3.04EfficientPhys-T1
ECG ClassificationMMSE-HRPearson Correlation0.92EfficientPhys-T1
ECG ClassificationMMSE-HRRMSE5.91EfficientPhys-T1
ECG ClassificationMMSE-HRMAE3.48EfficientPhys-C
ECG ClassificationMMSE-HRPearson Correlation0.86EfficientPhys-C
ECG ClassificationMMSE-HRRMSE7.21EfficientPhys-C
Photoplethysmography (PPG)UBFC-rPPGMAE1.14EfficientPhys-C
Photoplethysmography (PPG)UBFC-rPPGPearson Correlation0.99EfficientPhys-C
Photoplethysmography (PPG)UBFC-rPPGRMSE1.81EfficientPhys-C
Photoplethysmography (PPG)UBFC-rPPGMAE2.08EfficientPhys-T1
Photoplethysmography (PPG)UBFC-rPPGPearson Correlation0.96EfficientPhys-T1
Photoplethysmography (PPG)UBFC-rPPGRMSE4.91EfficientPhys-T1
Photoplethysmography (PPG)MMSE-HRMAE3.04EfficientPhys-T1
Photoplethysmography (PPG)MMSE-HRPearson Correlation0.92EfficientPhys-T1
Photoplethysmography (PPG)MMSE-HRRMSE5.91EfficientPhys-T1
Photoplethysmography (PPG)MMSE-HRMAE3.48EfficientPhys-C
Photoplethysmography (PPG)MMSE-HRPearson Correlation0.86EfficientPhys-C
Photoplethysmography (PPG)MMSE-HRRMSE7.21EfficientPhys-C
Blood pressure estimationUBFC-rPPGMAE1.14EfficientPhys-C
Blood pressure estimationUBFC-rPPGPearson Correlation0.99EfficientPhys-C
Blood pressure estimationUBFC-rPPGRMSE1.81EfficientPhys-C
Blood pressure estimationUBFC-rPPGMAE2.08EfficientPhys-T1
Blood pressure estimationUBFC-rPPGPearson Correlation0.96EfficientPhys-T1
Blood pressure estimationUBFC-rPPGRMSE4.91EfficientPhys-T1
Blood pressure estimationMMSE-HRMAE3.04EfficientPhys-T1
Blood pressure estimationMMSE-HRPearson Correlation0.92EfficientPhys-T1
Blood pressure estimationMMSE-HRRMSE5.91EfficientPhys-T1
Blood pressure estimationMMSE-HRMAE3.48EfficientPhys-C
Blood pressure estimationMMSE-HRPearson Correlation0.86EfficientPhys-C
Blood pressure estimationMMSE-HRRMSE7.21EfficientPhys-C
Medical waveform analysisUBFC-rPPGMAE1.14EfficientPhys-C
Medical waveform analysisUBFC-rPPGPearson Correlation0.99EfficientPhys-C
Medical waveform analysisUBFC-rPPGRMSE1.81EfficientPhys-C
Medical waveform analysisUBFC-rPPGMAE2.08EfficientPhys-T1
Medical waveform analysisUBFC-rPPGPearson Correlation0.96EfficientPhys-T1
Medical waveform analysisUBFC-rPPGRMSE4.91EfficientPhys-T1
Medical waveform analysisMMSE-HRMAE3.04EfficientPhys-T1
Medical waveform analysisMMSE-HRPearson Correlation0.92EfficientPhys-T1
Medical waveform analysisMMSE-HRRMSE5.91EfficientPhys-T1
Medical waveform analysisMMSE-HRMAE3.48EfficientPhys-C
Medical waveform analysisMMSE-HRPearson Correlation0.86EfficientPhys-C
Medical waveform analysisMMSE-HRRMSE7.21EfficientPhys-C

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