학술논문

Sequential Classification of ASL Signs in the Context of Daily Living Using RF Sensing
Document Type
Conference
Source
2021 IEEE Radar Conference (RadarConf21) Radar Conference (RadarConf21), 2021 IEEE. :1-6 May, 2021
Subject
Aerospace
General Topics for Engineers
Signal Processing and Analysis
Radio frequency
Human computer interaction
Target recognition
Assistive technology
Gesture recognition
Tools
Sensors
Sequential classification
trigger detection
RF sensing
ASL recognition
gesture recognition
Language
ISSN
2375-5318
Abstract
RF sensing based human activity and hand gesture recognition (HGR) methods have gained enormous popularity with the development of small package, high frequency radar systems and powerful machine learning tools. However, most HGR experiments in the literature have been conducted on individual gestures and in isolation from preceding and subsequent motions. This paper considers the problem of American sign language (ASL) recognition in the context of daily living, which involves sequential classification of a continuous stream of signing mixed with daily activities. In particular, this paper investigates the efficacy of different RF input representations and fusion techniques for ASL and trigger gesture recognition tasks in a daily living scenario, which can be potentially used for sign language sensitive human-computer interfaces (HCI). The proposed approach involves first detecting and segmenting periods of motion, followed by feature level fusion of the range-Doppler map, micro-Doppler spectrogram, and envelope for classification with a bi-directional long short-term memory (BiL-STM) recurrent neural network. Results show 93.3% accuracy in identification of 6 activities and 4 ASL signs, as well as a trigger sign detection rate of 0.93.