CVNov 13, 2018

Home Activity Monitoring using Low Resolution Infrared Sensor

arXiv:1811.05416v125 citations
Originality Incremental advance
AI Analysis

This addresses privacy concerns in health monitoring for home environments, offering an incremental improvement over existing methods.

The paper tackles the problem of privacy-preserving human activity monitoring in home environments by using a low-resolution thermal sensor, achieving 87.50% overall accuracy across 7 activities with 100% sensitivity and 99.21% specificity for fall detection.

Action monitoring in a home environment provides important information for health monitoring and may serve as input into a smart home environment. Visual analysis using cameras can recognise actions in a complex scene, such as someones living room. However, although there the huge potential benefits and importance, specifically for health, cameras are not widely accepted because of privacy concerns. This paper recognises human activities using a sensor that retains privacy. The sensor is not only different by being thermal, but it is also of low resolution: 8x8 pixels. The combination of the thermal imaging, and the low spatial resolution ensures the privacy of individuals. We present an approach to recognise daily activities using this sensor based on a discrete cosine transform. We evaluate the proposed method on a state-of-the-art dataset and experimentally confirm that our approach outperforms the baseline method. We also introduce a new dataset, and evaluate the method on it. Here we show that the sensor is considered better at detecting the occurrence of falls and Activities of Daily Living. Our method achieves an overall accuracy of 87.50% across 7 activities with a fall detection sensitivity of 100% and specificity of 99.21%.

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