An Ultra-Low Resource Wearable Eda Sensor Using Wavelet Compression

2018 IEEE 15TH INTERNATIONAL CONFERENCE ON BIOMEDICAL AND HEALTH INFORMATICS (BHI) AND THE WEARABLE AND IMPLANTABLE BODY SENSOR NETWORKS (BSN)(2018)

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摘要
This study presents an ultra-low resource platform for physiological sensing that uses on-chip wavelet compression to enable long-term recording of electrodermal activity (EDA) within a 64kB microcontroller. The design is implemented on a wearable platform and provides improvements in size and power compared to existing wearable technologies and was used in a lab setting to monitor EDA of 27 participants throughout a stress induction protocol. We demonstrate the device's sensitivity to stress induction by providing descriptive statistics of 8 common EDA signal features for each stressor of the experiment. To the best of our knowledge, this is the first time a generic, 16-bit microcontroller (MCU) has been used to record real-time physiological signals on a wearable platform without the use of external memory chips or wireless transmission for extended periods of time. The compression techniques described can lead to reductions in size, power, and cost of wearable biosensors with little or no modifications to existing sensor hardware and could be valuable for applications interested in monitoring long-term physiological trends at lower data rates and memory requirements.
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ultra-low resource platform,physiological sensing,on-chip wavelet compression,long-term recording,electrodermal activity,wearable platform,wearable technologies,stress induction,16-bit microcontroller,real-time physiological signals,external memory chips,compression techniques,wearable biosensors,existing sensor hardware,long-term physiological trends,ultra-low resource wearable EDA sensor,common EDA signal features,MCU,memory requirements
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