Centre for Research and Technology Hellas, Information Technologies Institute, 6th Km Charilaou-Thermi, 57001 Thessaloniki, Greece.
Sensors (Basel). 2021 Apr 13;21(8):2723. doi: 10.3390/s21082723.
The continuing advancements in technology have resulted in an explosion in the use of interconnected devices and sensors. Internet-of-Things (IoT) systems are used to provide remote solutions in different domains, like healthcare and security. A common service offered by IoT systems is the estimation of a person's position in indoor spaces, which is quite often achieved with the exploitation of the Received Signal Strength Indication (RSSI). Localization tasks with the goal to locate the room are actually classification problems. Motivated by a current project, where there is the need to locate a missing child in crowded spaces, we intend to test the added value of using an accelerometer along with RSSI for room-level localization and assess the performance of ensemble learning methods. We present here the results of this preliminary approach of the early and late fusion of RSSI and accelerometer features in room-level localization. We further test the performance of the feature extraction from RSSI values. The classification algorithms and the fusion methods used to predict the room were evaluated using different protocols applied to a public dataset. The experimental results revealed better performance of the RSSI extracted features, while the accelerometer's individual performance was poor and subsequently affected the fusion results.
技术的不断进步导致了互联设备和传感器的使用呈爆炸式增长。物联网 (IoT) 系统用于提供不同领域的远程解决方案,如医疗保健和安全。物联网系统提供的一项常见服务是估计人员在室内空间的位置,这通常是通过利用接收信号强度指示 (RSSI) 来实现的。以定位房间为目标的定位任务实际上是分类问题。受当前项目的启发,该项目需要在拥挤的空间中定位失踪的儿童,我们打算测试使用加速度计和 RSSI 进行房间级定位的附加价值,并评估集成学习方法的性能。我们在这里介绍了 RSSI 和加速度计特征在房间级定位中的早期和晚期融合的初步方法的结果。我们进一步测试了从 RSSI 值中提取特征的性能。使用不同协议应用于公共数据集来评估用于预测房间的分类算法和融合方法。实验结果表明,RSSI 提取特征的性能更好,而加速度计的单独性能较差,随后影响了融合结果。