Affiliation:
1. School of Computer Science, University of South China, Hengyang 421001, China
Abstract
This paper introduces a novel approach for enhancing human activity recognition through the integration of LoRa wireless RF signal preprocessing and deep learning. We tackle the challenge of extracting features from intricate LoRa signals by scrutinizing the unique propagation process of linearly modulated LoRa signals—a critical aspect for effective feature extraction. Our preprocessing technique involves converting intricate data into real numbers, utilizing Short-Time Fourier Transform (STFT) to generate spectrograms, and incorporating differential signal processing (DSP) techniques to augment activity recognition accuracy. Additionally, we employ frequency-to-image conversion for the purpose of intuitive interpretation. In comprehensive experiments covering activity classification, identity recognition, room identification, and presence detection, our carefully selected deep learning models exhibit outstanding accuracy. Notably, ConvNext attains 96.7% accuracy in activity classification, 97.9% in identity recognition, and 97.3% in room identification. The Vision TF model excels with 98.5% accuracy in presence detection. Through leveraging LoRa signal characteristics and sophisticated preprocessing techniques, our transformative approach significantly enhances feature extraction, ensuring heightened accuracy and reliability in human activity recognition.
Funder
National Natural Science Foundation of China
Natural Science Foundation of Hunan Province
Research Foundation of Education Bureau of Hunan Province
Guiding Plan Project of Hengyang City
Reference41 articles.
1. Arshad, M.H., Bilal, M., and Gani, A. (2022). Human activity recognition: Review, taxonomy and open challenges. Sensors, 22.
2. A review of multimodal human activity recognition with special emphasis on classification, applications, challenges and future directions;Yadav;Knowl.-Based Syst.,2021
3. A review on radio based activity recognition;Wang;Digit. Commun. Netw.,2015
4. A survey on unsupervised learning for wearable sensor-based activity recognition;Ige;Appl. Soft Comput.,2022
5. Vision-based human activity recognition: A survey;Beddiar;Multimed. Tools Appl.,2020