CVApr 2, 2024

EventSleep: Sleep Activity Recognition with Event Cameras

arXiv:2404.01801v16 citationsh-index: 21ECCV Workshops
Originality Incremental advance
AI Analysis

This work addresses sleep monitoring for medical analysis, offering a new dataset and method for activity recognition in low-light conditions, though it is incremental in applying existing techniques to a new domain.

The authors tackled the problem of sleep activity recognition in dark environments using event cameras by introducing the EventSleep dataset and a novel pipeline, achieving high accuracy and robustness through Bayesian neural networks and Laplace ensembles.

Event cameras are a promising technology for activity recognition in dark environments due to their unique properties. However, real event camera datasets under low-lighting conditions are still scarce, which also limits the number of approaches to solve these kind of problems, hindering the potential of this technology in many applications. We present EventSleep, a new dataset and methodology to address this gap and study the suitability of event cameras for a very relevant medical application: sleep monitoring for sleep disorders analysis. The dataset contains synchronized event and infrared recordings emulating common movements that happen during the sleep, resulting in a new challenging and unique dataset for activity recognition in dark environments. Our novel pipeline is able to achieve high accuracy under these challenging conditions and incorporates a Bayesian approach (Laplace ensembles) to increase the robustness in the predictions, which is fundamental for medical applications. Our work is the first application of Bayesian neural networks for event cameras, the first use of Laplace ensembles in a realistic problem, and also demonstrates for the first time the potential of event cameras in a new application domain: to enhance current sleep evaluation procedures. Our activity recognition results highlight the potential of event cameras under dark conditions, and its capacity and robustness for sleep activity recognition, and open problems as the adaptation of event data pre-processing techniques to dark environments.

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