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Communication
Elective
3credits

In this course, we introduce the contemporary commercial mobile communication system: LTE and 5G. This course will help the students understand the whole system of mobile communication specifically its internal entities and their inter-working.

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Prerequisite

This course introduces core concepts of machine learning with hands-on programming and practical applications in communication systems. The first half covers Python-based implementation and deep learning models, applied to tasks such as radio signal classification and channel estimation. The second half focuses on Federated Learning, a key emerging area in wireless communications, covering its challenges, algorithms, and applications.

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Prerequisite

Uncertainties exist everywhere in the real world, including finance, artificial intelligence (AI), and robotics. In the advent of increasing data, computation, and hardware, we are now more equipped than ever to design complex stochastic control systems that are far more robust, adaptive, and generalizable compared to their traditional deterministic counterparts. This project-based topics course will sample several of these important methods in stochastic control. Topics include stochastic dynamic programming, introductory stochastic differential/difference equations (SDEs), Markov chain models, stochastic programming, Bayesian filtering, and sampling.

 

prerequisite from another department: calculus, Ordinary Differential Equations and Dynamical Systems(Mathematical Sciences)

ETC: Python/MATLAB programming

This course is designed for students who understand deep learning and convolutional neural networks and studies research topics related to convolutional neural networks. Topics can include residual network, knowledge distillation, network minimization, image-to-image translation, continual learning, domain adaptation, data augmentation, self-supervised learning, meta-learning, attention.

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Prerequisite

This course provides an overview of neuro-imaging and neuro-image processing techniques. We will discuss the historical and recent development of neuro-imaging technology as well as and neuro-image processing techniques. Neuro-imaging modalities will be discussed with an emphasis on optical imaging. On the imaging processing side, general image processing techniques as well as specialized techniques for processing neuro-images will be discussed.

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Prerequisite

This lecture provides advanced multimedia processing and learning. Multisensory signal, video, audio, and language are core components of multimedia. Multimodal learning with them is one of the core technologies in multimedia in real-world applications such as intelligent surveillance, smart TVs, and human-machine interface systems. Lecture topics include the basics of multimedia learning, which is image, video, audio, and language representation learning, multimedia fusion schemes, multimedia alignment, and multimedia attention. In addition to the basics of multimodal, students are to participate in term projects and papers reading recently published in multimodal processing and learning.

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Prerequisite

This course deals with recent techniques based on deep learning for speech pre-processing, recognition, synthesis, and speaker recognition technologies, and makes it possible to extend the area of applications of speech intelligence.

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Prerequisite

The primary goal of this course is to understand the sound propagation and learn how to extract information from various sound fields. The course covers fundamental principles of sound propagation, beamforming, sound localization, acoustic holography, and related array signal processing techniques for extracting sound information from various environment.

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Prerequisite

The primary goal of this course is to understand the sound propagation and learn how to extract information from various sound fields. The course covers fundamental principles of sound propagation, beamforming, sound localization, acoustic holography, and related array signal processing techniques for extracting sound information from various environment.

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Prerequisite