1. CSI-Based Cross-Domain Activity Recognition via Zero-Shot Prototypical Networks
- Author
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Diaz, Guillermo, Sobron, Iker, Eizmendi, Inaki, Landa, Iratxe, and Velez, Manuel
- Subjects
Electrical Engineering and Systems Science - Signal Processing - Abstract
The cross-domain capability of wireless sensing is currently one of the major challenges on human activity recognition (HAR) based on the channel state information (CSI) of wireless signals. The difficulty of labeling samples from new domains has encouraged the use of few and zero shot strategies. In this context, prototype networks have attracted attention due to their reasonable cross-domain transferability. This paper presents a novel zero-shot prototype recurrent convolutional network that implements a zero-shot learning strategy for HAR via CSI. This method extracts the prototypes from an available source domain to classify unseen and unlabeled data from the target domain for the same or similar classes. The experiments have been developed using three datasets with real measurements, and the results include an inter-datasets evaluation. Overall, the results improve the state of the art and make it a promising solution for cross-domain HAR., Comment: The authors have identified a significant error in the neural network configuration, specifically related to the addition of the LSTM layer after the CNN blocks and the method used to input data into the network. As a result, we have verified that the outcomes are inconsistent with what would be expected from a correctly configured neural network
- Published
- 2023