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- Title
基于高阶累积量和改进GRNN的CSI手臂行为识别.
- Authors
李新春; 谷永延; 黄朝晖; 纪小璐; 魏武; 孟硕
- Abstract
In order to deeply mine the nonlinear characteristics of channel state information (CSI) in arm behavior recognition to improve recognition accuracy, this paper proposes a CSI arm behavior recognition algorithm based on high-order cumulants and improved generalized regression neural network (GRNN). In the offline phase, firstly, the CSI amplitude and phase difference collected under different movements of the arm are used as the base signal, and the subcarriers with strong sensitivity are selected by the spearman rank correlation coefficient improved by the mean absolute deviation. The high-order cumulant features are extracted from selected subcarriers to obtain nonlinear non-Gaussian information in CSI. Finally, the action recognition model named GWO-GRNN that can effectively deal with nonlinear problems is trained in the GRNN optimized by the grey wolf optimizer (GWO). In the online phase, the input CSI data is used to distinguish arm movements through the trained recognition model. Through simulation experiments, the recognition accuracy of the algorithm is 95.83%, which is higher than the accuracy achieved by the current related algorithms, and has obvious recognition advantages.
- Subjects
FEATURE extraction; NONLINEAR equations; CUMULANTS
- Publication
Journal of Chongqing University of Posts & Telecommunications (Natural Science Edition), 2022, Vol 34, Issue 2, p331
- ISSN
1673-825X
- Publication type
Article
- DOI
10.3979/j.issn.1673-825X.202008100246