• Highly Integrated Wireless Direct Drive Motor System for Fully Enclosed Environments

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/95286760379?pwd=3C7A8QPlmXLJAQZ5IsYbEWdDXXvWk1.1 Meeting ID: 952 8676 0379 Password: 492840 Abstract Contemporary global motor systems predominantly rely on cable-based and battery-powered energy transmission mediums, both of which exhibit fundamental structural limitations. Wired systems face challenges such as installation and maintenance complexity, mobility constraints, and safety vulnerabilities, particularly in confined spaces or high-precision applications. On the […]

  • Towards Ubiquitous Radio Access Using Nanodiamond Based Quantum Receivers

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/5098778281?pwd=wMZ3GQvpRdxkCjv8p79h3JN1xdgOJe.1 Meeting ID: 509 877 8281 Password: 670951 Abstract The development of sixth-generation wireless communication systems demands innovative solutions to address challenges in the deployment of a large number of base stations and the detection of multi-band signals. Quantum technology, specifically nitrogen-vacancy centers in diamonds, offers promising potential for the development of compact, […]

  • A Novel Training Framework for Physics-informed Neural Networks: Towards Real-time Applications in Ultrafast Ultrasound Blood Flow Imaging

    Room CB-603, 6/F, Chow Yei Ching Building, The University of Hong Kong

    Abstract Ultrafast ultrasound blood flow imaging is a state-of-the-art technique for depiction of complex blood flow dynamics in vivo through thousands of full-view image data (or, timestamps) acquired per second. Physics-informed Neural Network (PINN) is one of the most preeminent solvers of the Navier-Stokes equations, widely used as the governing equation of blood flow. However, […]

  • Rank-Revealing Bayesian Block-Term Tensor Completion with Graph Information

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/97776760951?pwd=zaNBWC786IgVZjQ7NU8SNDJdEeIorn.1 Abstract Block-term decomposition (BTD), particularly its rank-(L_r,L_r,1) special case, is widely used in signal processing. Traditional methods for computing BTD from fully observed tensors either unrealistically assume the tensor rank and block-term ranks are known or require exhaustive tuning of these parameters. While sparsity-promoting regularization has been introduced to estimate ranks more […]

  • Trustworthy Image Semantic Communication with GenAI: Explainability, Controllability, and Efficiency

    Room CB-601J, 6/F, Chow Yei Ching Building, The University of Hong Kong

    Abstract Image semantic communication (ISC) has garnered significant attention for its potential to achieve high efficiency in visual content transmission. However, existing ISC systems based on joint source-channel coding face challenges in interpretability, operability, and compatibility. To address these limitations, we propose a novel trustworthy ISC framework. This approach leverages text extraction and segmentation mapping […]

  • WireLightning: Harnessing Capacitances for In-Transit Massively Parallel Matrix Multiplication

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/3837289217?omn=95617077246 Abstract Analog computing-in-memory accelerators promise ultra-low-power, on-device AI by reducing data transfer and energy usage. Yet inherent device variations and high energy consumption for analog-digital conversion continue to hinder their wide-scale adoption in mainstream systems. To address these issues, this presentation will introduce WireLightning, a novel capacitive-computing accelerator featuring a mixed-signal architecture […]

  • Towards Federated and Annotation-efficient Deep Learning for Medical Image Analysis

    Online via Zoom

    Zoom Link : https://hku.zoom.us/j/91765972342?pwd=CHXoKEknnfPc6zbhHCADi7A1abVUyI.1 Abstract As deep learning is increasingly applied in medical image analysis, developing efficient and accurate models has become crucial. However, traditional deep learning methods usually require large amounts of annotated data, posing a significant challenge in medical imaging due to complex data collection and high annotation costs. Furthermore, privacy and security […]

  • Mixture of Experts-augmented Deep Unfolding for Activity Detection

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/95300634244 Abstract In the realm of activity detection for massive machine-type communications, intelligent reflecting surfaces (IRS) have shown significant potential in enhancing coverage for devices lacking direct connections to the base station (BS). However, traditional activity detection methods are typically designed for a single type of channel model, which does not reflect the […]

  • Distributed Mixture-of-Expert Systems at the Wireless Edge (Duplicate)

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/91757354553?pwd=tHpInMTglaIVMJLek0ydP0vddHihh8.1  Meeting ID: 917 5735 4553 Passcode: 587193 Abstract Existing Video-to-Audio (V2A) models typically generate sound based solely on visual input, offering limited user control. To address this limitation, we propose a multimodal controllable V2A system that conditions audio generation on a variety of user inputs– such as text, images, or audio– in […]

  • End-to-end High-quality Posterior Ocular Shape Reconstruction in Ophthalmology

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/98147018160?pwd=KEuU1XQtISq3HQpWJyF6itZMJ1hYY5.1 Meeting ID: 981 4701 8160 Password: 294231 Abstract Accurately estimating morphological changes of the Posterior Eyeball Shape (PES) is a critical task in ophthalmology, since the PES is a crucial factor in many clinical applications, such as myopia prevention, surgical planning, and disease screening. However, existing imaging devices are constrained by limited field-of-view (FOV) […]

  • Symmetric Diffusers: Learning Discrete Diffusion on Finite Symmetric Groups

    Room CB-603, 6/F, Chow Yei Ching Building, The University of Hong Kong

    We regret to inform you that the event has been cancelled and will be postponed to a later date.  Abstract Finite symmetric groups Sn are essential in fields such as combinatorics, physics, and chemistry. However, learning a probability distribution over Sn poses significant challenges due to its intractable size and discrete nature. We introduce SymmetricDiffusers, […]

  • Distributed Mixture-of-Expert Systems at the Wireless Edge

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/93486553339 Abstract The emergence of distributed Mixture-of-Experts (DMoE) systems, which deploy expert models at edge nodes, offers a pathway to achieving connected intelligence in sixth-generation (6G) mobile networks and edge artificial intelligence (AI). However, current DMoE systems lack an effective expert selection algorithm to address the simultaneous task-expert relevance and channel diversity inherent […]

  • Strategies on Perovskite Nanocrystals for Achieving High-Performance Light Emitting Devices

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/92719085356?pwd=09aQ3vjvg9bhXcObBYxjNtj4UVx5V4.1 Abstract Mixed-chloride/bromide perovskite nanocrystals (PeNCs) are known for their advantages in pure blue emission, but often suffer from halogen segregation. This study investigates the ligand exchange process with different ion pair combinations to improve stability. Surprisingly, altering the ligand ion combinations leads to a deviation from pure blue emission in CsPbBrxCl3-x nanocrystals […]

  • Keynode-Driven Dynamic Mesh Compression

    Room CB-603, 6/F, Chow Yei Ching Building, The University of Hong Kong

    Abstract 3D Dynamic Meshes can deliver engaging experiences in various applications, but the storage and transmission demands associated with these data structures can be prohibitive. We address this challenge with an efficient compression technique leveraging embedded key nodes. The temporal motion of each vertex is formulated as a distance-weighted combination of transformations from neighboring key […]

  • Understanding Complex-Valued Transformer for Modulation Recognition

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/95380440070 Abstract Complex-valued convolution neural networks (CVCNNs) have been recently applied for modulation recognition (MR), due to its ability to capture the relationship between the real and imaginary parts of the received signal. On the other hand, the transformer model has been shown to be distinguished in MR by its superior capability to […]

  • Reimagining Edge AI and LLM Inference with Compute Memory Architectures

    Room CB-603, 6/F, Chow Yei Ching Building, The University of Hong Kong

    Abstract Recent advances in artificial intelligence (AI), especially in large language models (LLMs), have dramatically increased model sizes and computational demands, significantly straining computing system capabilities. This issue is particularly acute in resource-constrained edge AI scenarios, where efficient hardware acceleration of compute-intensive tasks and optimization of data reuse to minimize costly data transfers are essential. […]

  • Security and Efficient Brain-inspired In-memory Computing

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/97430126742?pwd=ou6CUPNMjhlrmRbwUKRa8aTHi6PjYX.1 Meeting ID: 974 3012 6742 Password: 967270 Abstract The human brain operates as a sophisticated spiking neural network (SNN), capable of learning multimodal signals in a zero-shot manner by leveraging prior knowledge. Impressively, it accomplishes this with minimal energy consumption, relying on event-driven signals that travel through its intricate structure. However, replicating […]

  • Digital Over-the-Air Computation: Achieving High Reliability via Bit-Slicing

    Online via Zoom

    Zoom Link: https://hku.zoom.us/j/99273671426?pwd=bm3VeyFWXnLAlUIBBXJDGAmMfzoKJ5.1 Abstract 6G mobile networks aim to realize ubiquitous intelligence at the network edge via distributed learning, sensing, and data analytics. Their common operation is to aggregate high-dimensional data, which causes a communication bottleneck that cannot be resolved using traditional orthogonal multi-access schemes. A promising solution, called over-the-air computation (AirComp), exploits channels’ waveform […]

  • Seminar on Human-AI Ecosystems for Daily Health and Well-being

    Room CB-603, 6/F, Chow Yei Ching Building, The University of Hong Kong

    Abstract As the intelligence of everyday smart devices continues to evolve, they can already monitor basic health behaviors such as physical activities and heart rates. The vision of an intelligent health monitoring and intervention pipeline seems to be within reach. How do we get there? In this talk, I will introduce a comprehensive pipeline that […]

  • Seminar on Terahertz Optoelectronics for Non-Invasive Imaging and Beyond

    Room CB-603, 6/F, Chow Yei Ching Building, The University of Hong Kong

    Abstract Terahertz (THz) imaging technology is growing rapidly due to its potential applications in material exploration, non-destructive evaluation, industrial inspection, and bioinformatics. However, the practical feasibility of THz imaging systems is significantly constrained by the low efficiency of active THz devices, long imaging acquisition time, insufficient use of THz signal datasets, and their bulky nature. […]