Long-Range Gesture Recognition Using Millimeter Wave Radar
This work addresses a limitation in human-computer interaction by enabling long-range gesture recognition, which is incremental as it builds on prior close-range methods.
The paper tackles the problem of recognizing gestures at distances over one meter using millimeter wave radar, achieving practical performance in real-world scenarios through a novel data processing method and a customized CNN.
Millimeter wave (mmWave) based gesture recognition technology provides a good human computer interaction (HCI) experience. Prior works focus on the close-range gesture recognition, but fall short in range extension, i.e., they are unable to recognize gestures more than one meter away from considerable noise motions. In this paper, we design a long-range gesture recognition model which utilizes a novel data processing method and a customized artificial Convolutional Neural Network (CNN). Firstly, we break down gestures into multiple reflection points and extract their spatial-temporal features which depict gesture details. Secondly, we design a CNN to learn changing patterns of extracted features respectively and output the recognition result. We thoroughly evaluate our proposed system by implementing on a commodity mmWave radar. Besides, we also provide more extensive assessments to demonstrate that the proposed system is practical in several real-world scenarios.