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WiFi-Vision Cross-modality learning for Human Activity Recognition

In this PhD project, the student will investigate the following three main directions:

1) Designing effective WiFi feature templates (e.g., angle of arrival[1], Doppler frequency shift[4]) to capture human behaviour information while suppressing noise caused by various factors such as multipath effect.

2) Developing state-of-the-art cross-modality learning algorithms that can leverage other potential sensing modalities (e.g., 3D skeleton extracted from videos[2]) to provide supervision information for representation learning.

3) Developing practical WiFi(-vision) based HAR systems that can be generalised to different environments in real-world scenarios.  The student can begin with existing public datasets (e.g., the MM-FI dataset[3]), but will later need to collect their own dataset that includes real-world challenges (with multiple subjects, in less controlled environments). Additional new RF sensing modalities (such as mmWave) can also be collected and incorporated into modelling. 

 The studentship covers fees at Home rate and a stipend pay at current UKRI rate . EU/International applicants are welcome to apply but will be required to cover the difference between Home and EU/International fees.

Please contact Dr. Yu Guan (Yu.Guan@warwick.ac.uk) if you have any informal enquiries.

Fri 22 Mar 2024, 08:34