Litcius/Paper detail

AutoHR: A Strong End-to-End Baseline for Remote Heart Rate Measurement With Neural Searching

Zitong Yu, Xiaobai Li, Xuesong Niu, Jingang Shi, Guoying Zhao

2020IEEE Signal Processing Letters153 citationsDOIOpen Access PDF

Abstract

Remote photoplethysmography (rPPG), which aims at measuring heart activities without any contact, has great potential in many applications (e.g., remote healthcare). Existing end-to-end rPPG and heart rate (HR) measurement methods from facial videos are vulnerable to the less-constrained scenarios (e.g., with head movement and bad illumination). In this letter, we explore the reason why existing end-to-end networks perform poorly in challenging conditions and establish a strong end-to-end baseline (AutoHR) for remote HR measurement with neural architecture search (NAS). The proposed method includes three parts: 1) a powerful searched backbone with novel Temporal Difference Convolution (TDC), intending to capture intrinsic rPPG-aware clues between frames; 2) a hybrid loss function considering constraints from both time and frequency domains; and 3) spatio-temporal data augmentation strategies for better representation learning. Comprehensive experiments are performed on three benchmark datasets, and we achieved superior performance on both intra- and cross-dataset testings.

Topics & Concepts

PhotoplethysmogramBaseline (sea)Computer scienceBenchmark (surveying)Convolution (computer science)Artificial intelligenceRepresentation (politics)Artificial neural networkHeart rate variabilityFunction (biology)Computer visionPattern recognition (psychology)Convolutional neural networkTemporal resolutionReal-time computingMachine learningFeature extractionRemote patient monitoringWord error rateElectrocardiographyNon-Invasive Vital Sign MonitoringEmotion and Mood RecognitionHeart Rate Variability and Autonomic Control