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High Accuracy WiFi-Based Human Activity Classification System with Time-Frequency Diagram CNN Method for Different Places

Lokesh Sharma, Chung-Hao Chao, Shih‐Lin Wu, Mei-Chen Li

2021Sensors17 citationsDOIOpen Access PDF

Abstract

Older people are very likely to fall, which is a significant threat to the health. However, falls are preventable and are not necessarily an inevitable part of aging. Many different fall detection systems have been developed to help people avoid falling. However, traditional systems based on wearable devices or image recognition-based have many disadvantages, such as user-unfriendly, privacy issues. Recently, WiFi-based fall detection systems try to solve the above problems. However, there is a common problem of reduced accuracy. Since the system is trained at the original signal collecting/training place, however, the application is at a different place. The proposed solution only extracts the features of the changed signal, which is caused by a specific human action. To implement this, we used Channel State Information (CSI) to train Convolutional Neural Networks (CNNs) and further classify the action. We have designed a prototype to test the performance of our proposed method. Our simulation results show an average accuracy of same place and different place is 93.2% and 90.3%, respectively.

Topics & Concepts

Convolutional neural networkComputer scienceWearable computerAction (physics)SIGNAL (programming language)Artificial intelligenceChannel (broadcasting)Falling (accident)Real-time computingDiagramChannel state informationMachine learningComputer securityPattern recognition (psychology)Embedded systemWirelessTelecommunicationsPhysicsEnvironmental healthDatabaseProgramming languageQuantum mechanicsMedicineIndoor and Outdoor Localization TechnologiesContext-Aware Activity Recognition SystemsWireless Networks and Protocols
High Accuracy WiFi-Based Human Activity Classification System with Time-Frequency Diagram CNN Method for Different Places | Litcius