Abstract

The advancements of ambient intelligence and ubiquitous computing are driving the unprecedented development of smart spaces where enhanced services are provided based on activity recognition. Meanwhile, user identification, which can enable the personalization of the enhanced services for specific users and the access control of confidential information, becomes increasingly important. Traditional approaches to user identification require either attached wearable sensors or active user participation. This paper presents Au-Id, a non-intrusive automatic user identification and authentication system through human motions captured from their daily activities based on RFID. The key insight is that the RFID tag array can capture human's physical and behavioral characteristics for user identification. Particularly, phase and RSSI data streams of the RFID tag array are fused to incorporate the information from time, space and modality dimensions. Based on this, a novel sequence labeling based segmentation method is proposed for target motion extraction. Then Au-Id leverages a multi-modal Convolutional Neural Network (CNN) for user identification and significantly reduces the training efforts by transfer learning. In addition, Au-Id facilitates user authentication by integrating the feature representations extracted by CNN with one-class SVM classifiers. The evaluation shows that Au-Id can achieve accurate and robust user identification and authentication.

Full Text
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