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Supplementary Data for "CLOAR: CSI-based Long-term Occupant Activity Recognition"
- Citation Author(s):
- Submitted by:
- Hoonyong Lee
- Last updated:
- Wed, 02/16/2022 - 00:26
- DOI:
- 10.21227/z10g-vt48
- Data Format:
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- Keywords:
Abstract
With the rapid deployment of indoor Wi-Fi networks, Channel State Information (CSI) has been used for device-free occupant activity recognition. However, various environmental factors interfere with the stable propagation of Wi-Fi signals indoors, which causes temporal variation of CSI data. In this study, we investigated temporal CSI variation in a real-world housing environment and its impact on learning-based occupant activity recognition. The CSI variation over time changes distributions of the CSI data, and the pre-trained model’s accuracy performance becomes degraded during long-term monitoring. In order to address the temporal dependency issue, we developed an effective long-term occupant activity recognition model based on the semi-supervised meta-learning approach. Our model leveraged unlabeled target data with its pseudo labels and synthesized numerous query datasets using mixup-based data augmentation, which generalized the model during training. The model provided an average of 91.09% activity classification accuracy for the target data, which had different statistical characteristics from the source data. This result demonstrates that our model can reliably monitor occupant activities for long-term periods.
- The dataset was collected by using T400 laptops with the Linux CSI Tool at a sample rate of 100 Hz with 30 subcarriers.
- The attached image shows the testbed, a 497 square feet one-bedroom apartment with the locations of one transmitter and three receivers.
- The dataset was collected on 9 selected days over one month—3 consecutive days at the beginning of the month, 3 consecutive days in the middle of the month, and 3 consecutive days at the end of the month.
- An occupant lived in the apartment during data collection. In this study, four target activities were selected for activity recognition.