TY - GEN
T1 - Continuous Arm Motion Recognition Using Two-stream Spatial-Temporal Neural Network Based on Millimeter Wave Sensor
AU - Zhang, Chengjin
AU - Wang, Shuoguang
AU - Yao, Lei
AU - Li, Shiyong
AU - An, Qiang
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2021
Y1 - 2021
N2 - Radar-based continuous arm motion recognition has attracted increasing interests from research community due to its huge potential to interact with machine in a longer distance. Whereas, most existing arm motion recognition work have been conducted on individual motion or without caring for the preceding and subsequent motion information in the continuous data stream. Practical operation also requires that the system must continuously detect and recognize arm motions using untruncated input radar echo streams with unknown transitions between motions. In this paper, to address these challenges, a two-stream neural network accounting for the spatial-temporal information of the radar data stream is proposed for automatic continuous arm motion recognition with a Doppler radar sensor. One stream of the network combined 1-D CNN and Bi-LSTM in a sequential manner to extract the bi-direction long-term temporal dependencies of deep column-wise spatial features. The other stream used ResNet50 to extract the global spatial features. The two are then fused to output the final class label. The comparison with the state-of-art continuous motion recognition network, 1-D CNN-Bi-LSTM, shows that our proposed network structure achieves higher recognition accuracy. Furthermore, by applying a sliding window to the data stream, our approach can handle with random length arm motion echo stream with unconstrained transitions.
AB - Radar-based continuous arm motion recognition has attracted increasing interests from research community due to its huge potential to interact with machine in a longer distance. Whereas, most existing arm motion recognition work have been conducted on individual motion or without caring for the preceding and subsequent motion information in the continuous data stream. Practical operation also requires that the system must continuously detect and recognize arm motions using untruncated input radar echo streams with unknown transitions between motions. In this paper, to address these challenges, a two-stream neural network accounting for the spatial-temporal information of the radar data stream is proposed for automatic continuous arm motion recognition with a Doppler radar sensor. One stream of the network combined 1-D CNN and Bi-LSTM in a sequential manner to extract the bi-direction long-term temporal dependencies of deep column-wise spatial features. The other stream used ResNet50 to extract the global spatial features. The two are then fused to output the final class label. The comparison with the state-of-art continuous motion recognition network, 1-D CNN-Bi-LSTM, shows that our proposed network structure achieves higher recognition accuracy. Furthermore, by applying a sliding window to the data stream, our approach can handle with random length arm motion echo stream with unconstrained transitions.
KW - Bi-directional Long Short-Term Memory
KW - Continuous arm motion recognition
KW - Micro-Doppler signatures
KW - Spatial-Temporal Features
KW - Two-stream neural network
UR - http://www.scopus.com/inward/record.url?scp=85181050313&partnerID=8YFLogxK
U2 - 10.1109/Radar53847.2021.10028140
DO - 10.1109/Radar53847.2021.10028140
M3 - Conference contribution
AN - SCOPUS:85181050313
T3 - Proceedings of the IEEE Radar Conference
SP - 3083
EP - 3087
BT - 2021 CIE International Conference on Radar, Radar 2021
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2021 CIE International Conference on Radar, Radar 2021
Y2 - 15 December 2021 through 19 December 2021
ER -