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Towards Ubiquitous Internet of Things Applications with Deep Domain Adaptation and Generalization
The Hong Kong University of Science and Technology Department of Computer Science and Engineering PhD Thesis Defence Title: "Towards Ubiquitous Internet of Things Applications with Deep Domain Adaptation and Generalization" By Miss Hua KANG Abstract: The rapid progression of the Internet-of-Things (IoT) has equipped the physical world with capabilities for sensing, computation, and communication, thereby altering human-centered interactions and fostering promising applications. The recent advancements in deep learning have revolutionized numerous fields and are now being adopted in IoT sensing applications. Nonetheless, there still exist some unresolved issues with regards to ubiquitous IoT applications. We identify four primary challenges encountered across IoT systems. Firstly, there is the problem of data heterogeneity due to diverse data collection contexts. Secondly, the labeling burden can be time-consuming. Thirdly, there are privacy concerns surrounding the distributed collection of data. Lastly, there are limited communication bandwidth resources for IoT devices. This dissertation elaborates on these four issues and their potential solutions to take a step towards ubiquitous IoT applications. For the first two issues, we consider how to swiftly adapt the model to unlabeled data with different distributions via unsupervised domain adaptation and how to generalize the model for different data distributions via domain generalization. We present innovative approaches for two specific applications, namely wireless-based gesture recognition and human activity recognition with partial sensor sets. Regarding the privacy issue of distributed collected data and limited communication bandwidth, one work proposes an efficient way to adapt the well pre-trained model to the target data on the edge device without access to the original training data, which can protect the privacy of the source data. Another work adopts a federated learning scheme to alleviate computation and communication overhead while safeguarding privacy. The last work considers the network layer for efficient data communication. We design deep learning models for wireless channel prediction, leveraging the stripe features present in the CSI matrix to reduce bandwidth overheads caused by the transmission of large downlink CSI matrix. Date: Friday, 18 August 2023 Time: 10:00am - 12:00noon Venue: Room 5501 Lifts 25/26 Chairman: Prof. Mansun CHAN (ECE) Committee Members: Prof. Qian ZHANG (Supervisor) Prof. Gary CHAN Prof. Yangqiu SONG Prof. Jun ZHANG (ECE) Prof. Jianping WANG (CityU) **** ALL are Welcome ****