SPCVHCLGJul 25, 2024

GesturePrint: Enabling User Identification for mmWave-based Gesture Recognition Systems

arXiv:2408.05358v114 citationsh-index: 50
Originality Incremental advance
AI Analysis

It addresses the need for personalized gesture interaction in applications like smart homes or offices, representing an incremental improvement by adding user identification to existing gesture recognition.

The paper tackles the problem of enabling user identification in mmWave-based gesture recognition systems, achieving gesture recognition accuracies of 98.87% and 98.22% with user identification accuracies of 99.78% and 99.26% in different environments.

The millimeter-wave (mmWave) radar has been exploited for gesture recognition. However, existing mmWave-based gesture recognition methods cannot identify different users, which is important for ubiquitous gesture interaction in many applications. In this paper, we propose GesturePrint, which is the first to achieve gesture recognition and gesture-based user identification using a commodity mmWave radar sensor. GesturePrint features an effective pipeline that enables the gesture recognition system to identify users at a minor additional cost. By introducing an efficient signal preprocessing stage and a network architecture GesIDNet, which employs an attention-based multilevel feature fusion mechanism, GesturePrint effectively extracts unique gesture features for gesture recognition and personalized motion pattern features for user identification. We implement GesturePrint and collect data from 17 participants performing 15 gestures in a meeting room and an office, respectively. GesturePrint achieves a gesture recognition accuracy (GRA) of 98.87% with a user identification accuracy (UIA) of 99.78% in the meeting room, and 98.22% GRA with 99.26% UIA in the office. Extensive experiments on three public datasets and a new gesture dataset show GesturePrint's superior performance in enabling effective user identification for gesture recognition systems.

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