Gestures detection and device control in AAL environments using machine learning and BLEs

Alexandros Spournias, Evanthia Faliagka, Theodoros Skandamis, Christos D. Antonopoulos, N. Voros, G. Keramidas
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Abstract

This paper presents a system for detecting gestures and controlling devices in Ambient Assisted Living (AAL) environments using machine learning and Bluetooth Low Energy (BLE) technology. The system consists of two main components: a device equipped with a set of sensors to detect hand gestures via IMU sensor and a BLE-enabled hub that receives the gesture data and controls the lighting of the house. The hub uses machine learning algorithms to recognize hand gestures and transmit the corresponding commands to the devices. The hub, in turn, uses wifi to communicate with the devices and execute the appropriate actions based on the received commands. The proposed system's performance evaluation was carried out through a series of experiments in a AAL environment. The results demonstrate that the system is capable of accurately detecting hand gestures and controlling various devices such as lights, where the model's performance yields successful predictions with an accuracy rate of 90%. The proposed system provides a user-friendly and intuitive way for elderly or people with disabilities to control their environment without the need for complex interfaces or physical buttons. Furthermore, the system can be easily extended to support more gestures and devices, making it a flexible and scalable solution for AAL environments.
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使用机器学习和BLEs的AAL环境中的手势检测和设备控制
本文介绍了一个使用机器学习和低功耗蓝牙(BLE)技术在环境辅助生活(AAL)环境中检测手势和控制设备的系统。该系统由两个主要组件组成:一个配备一组传感器的设备,通过IMU传感器检测手势;一个启用ble的集线器,接收手势数据并控制房屋的照明。该中心使用机器学习算法来识别手势,并将相应的命令传输到设备上。反过来,集线器使用wifi与设备通信,并根据接收到的命令执行适当的操作。通过AAL环境下的一系列实验,对所提出的系统进行了性能评估。结果表明,该系统能够准确地检测手势和控制各种设备,如灯,其中模型的性能产生成功的预测准确率为90%。该系统为老年人或残障人士提供了一种用户友好和直观的方式来控制他们的环境,而无需复杂的界面或物理按钮。此外,该系统可以轻松扩展以支持更多手势和设备,使其成为AAL环境中灵活且可扩展的解决方案。
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