Over the last few years, there have been a variety of human sensing applications developed
through Radiofrequency (RF) sensing engaged in multiple different sectors. Traditional
human activity recognition (HAR) methods have involved the use of sensors, which can
be inconvenient and invade the user’s privacy. As such, Wi-Fi sensing, a type of RF
sensing, provides a contactless yet effective way to achieve similar effects as traditional
sensors. In this project, a Bidirection Long Short-Term Memory (BiLSTM) model was
used to train channel state information (CSI) data from Wi-Fi signals collected in an indoor
environment, which achieved an accuracy of 83.65% when classifying between static and
dynamic actions. Alongside the use of the wavelet denoising method, the results indicate
that while human activities can be classified with CSI information with high accuracy,
further research is still necessary for improved accuracy and applicability of the model to
the real-world environment.Bachelor's degre
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