DS1 spectrogram: Unit-Independent Low-Rate Wrist GSR Processing for Stress Detection Using Phasic nSCR Features

Unit-Independent Low-Rate Wrist GSR Processing for Stress Detection Using Phasic nSCR Features

2607.08007

Authors

Zequan Liang,Sally Hang,Ning Miao,Mahdi Pirayesh Shirazi Nejad,Hossein Sayadi

Abstract

Galvanic skin response (GSR) is widely used for stress detection, but wrist-based GSR remains challenging because its absolute amplitude can differ substantially from laboratory-grade palmar measurements. In this paper, we propose a unit-independent low-rate wrist GSR processing pipeline to extract the number of skin conductance responses per minute (nSCR/min) as a stress-related feature.

We collect paired wrist and palmar GSR recordings from 31 participants during sitting baseline, standing baseline, neutral speaking, and the Trier Social Stress Test (TSST), a laboratory social stressor task. The proposed pipeline cleans the raw GSR signal, decomposes it into tonic skin conductance level (SCL) and phasic skin conductance response (SCR), applies robust z-score normalization, and detects phasic SCR peaks to compute nSCR/min.

Using random forest on 25Hz We-Be GSR, nSCR/min achieved balanced accuracies of 0.823 and 0.871 for binary classification between TSST and the sitting and standing baselines, respectively. Moreover, the 25Hz We-Be GSR features achieved comparable balanced accuracy to the original 100Hz features across the evaluated tasks.

These results suggest the feasibility of low-rate, unit-independent wrist GSR processing for wearable stress detection.

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