Wireless Multifrequency Feature Set to Simplify Human 3D Pose Estimation

Tutkimustuotos: Lehtiartikkelivertaisarvioitu

Tutkijat

Organisaatiot

  • University of British Columbia

Kuvaus

We present a multi-frequency feature set to detect driver's 3D head and torso movements from fluctuations in the Radio Frequency (RF) channel due to body movements. Current features used for movement detection are based on time-of-flight, received signal strength and channel state information, and come with the limitations of coarse tracking, sensitivity towards multipath effects and handling corrupted phase data, respectively. There is no standalone feature set which accurately detects small and large movements and determines the direction in 3D space. We resolve this problem by using two radio signals at widely separated frequencies in a monostatic configuration. By combining information about displacement, velocity, and direction of movements derived from the Doppler Effect at each frequency, we expand the number of existing features. We separate Pitch, Roll, and Yaw movements of head from torso and arm. The extracted feature set is used to train a K-Nearest Neighbor classification algorithm which could provide behavioral awareness to cars while being less invasive as compared to camera-based systems. The training results on a data from 4 participants reveal that at 1.8GHz, the classification accuracy is 77.4%, at 30GHz it is 87.4%, and multi-frequency feature set improves the accuracy to 92%.

Yksityiskohdat

AlkuperäiskieliEnglanti
Artikkeli8665970
Sivut876-880
Sivumäärä5
JulkaisuIEEE Antennas and Wireless Propagation Letters
Vuosikerta18
Numero5
Varhainen verkossa julkaisun päivämäärä2019
TilaJulkaistu - 1 toukokuuta 2019
OKM-julkaisutyyppiA1 Julkaistu artikkeli, soviteltu

Lataa tilasto

Ei tietoja saatavilla

ID: 32489233