Eco-friendly sensing for human activity recognition
Adjunct Proceedings of the 2023 ACM International Joint Conference on …, 2023•dl.acm.org
With the increasing number of IoT devices, there is a growing demand for energy-free
sensors. Human activity recognition holds immense value in numerous daily healthcare
applications. However, the majority of current sensing modalities consume energy, thus
limiting their sustainable adoption. In this paper, we present a novel activity recognition
system that not only operates without requiring energy for sensing but also harvests energy.
Our proposed system utilizes photovoltaic cells, attached to the wrist and shoes, as eco …
sensors. Human activity recognition holds immense value in numerous daily healthcare
applications. However, the majority of current sensing modalities consume energy, thus
limiting their sustainable adoption. In this paper, we present a novel activity recognition
system that not only operates without requiring energy for sensing but also harvests energy.
Our proposed system utilizes photovoltaic cells, attached to the wrist and shoes, as eco …
With the increasing number of IoT devices, there is a growing demand for energy-free sensors. Human activity recognition holds immense value in numerous daily healthcare applications. However, the majority of current sensing modalities consume energy, thus limiting their sustainable adoption. In this paper, we present a novel activity recognition system that not only operates without requiring energy for sensing but also harvests energy. Our proposed system utilizes photovoltaic cells, attached to the wrist and shoes, as eco-friendly sensing devices for activity recognition. By capturing photovoltaic readings and employing a deep transformer model with powerful learning capabilities, the system effectively recognizes user activities. To ensure robust performance across various subjects, time periods, and lighting conditions, the system incorporates feature extraction and different processing modules. The evaluation of the proposed system on realistic indoor and outdoor environments demonstrated its ability to recognize activities with an accuracy of 91.7%.

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