Wing-Kin Ma’s research while affiliated with The University of Hong Kong and other places

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Publications (276)


One-Bit Sigma-Delta DFRC Waveform Design: Using Quantization Noise for Radar Probing
  • Preprint

January 2025

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1 Read

Wai-Yiu Keung

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Wing-Kin Ma

Dual-functional radar-communication (DFRC) signal design has received much attention lately. We consider the scenario of one-bit massive multi-input multi-output (MIMO) wherein one-bit DACs are employed for the sake of saving hardware costs. Specifically, a spatial Sigma-Delta (ΣΔ)(\Sigma\Delta) modulation scheme is proposed for one-bit MIMO-DFRC waveform design. Unlike the existing approaches which require large-scale binary optimization, the proposed scheme performs ΣΔ\Sigma\Delta modulation on a continuous-valued DFRC signal. The subsequent waveform design is formulated as a constrained least square problem, which can be efficiently solved. Moreover, we leverage quantization noise for radar probing purposes, rather than treating it as unwanted noise. Numerical results demonstrate that the proposed scheme performs well in both radar probing and downlink precoding.


Fig. 1: The limited feedback scenario considered in this work.
Fig. 5: Recovery performance under different feedback dimensions (R and T in Schemes 1 and 2, respectively); N = 32, M = 16, K = 6. Solid and dashed lines represent the 3-bit quantization case and the 2-bit quantization case, respectively.
Fig. 6: Performance comparison between the proposed and UE-based methods; N = 32, M = 16, K = 6, Q = 3. Fig. 7 shows the feedback time required for each of these methods.
Fig. 7: Feedback preparation time at UE; M = 16, K = 6, 3-bit quantization, 900 feedback bits.
Fig. 8: Sensitivity to SNR of received pilot signals; N = 32, M = 16, K = 6, Q = 3, 900 feedback bits.

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Downlink MIMO Channel Estimation from Bits: Recoverability and Algorithm
  • Preprint
  • File available

November 2024

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21 Reads

Rajesh Shrestha

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Mingjie Shao

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Mingyi Hong

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[...]

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Xiao Fu

In frequency division duplex (FDD) massive MIMO systems, a major challenge lies in acquiring the downlink channel state information}\ (CSI) at the base station (BS) from limited feedback sent by the user equipment (UE). To tackle this fundamental task, our contribution is twofold: First, a simple feedback framework is proposed, where a compression and Gaussian dithering-based quantization strategy is adopted at the UE side, and then a maximum likelihood estimator (MLE) is formulated at the BS side. Recoverability of the MIMO channel under the widely used double directional model is established. Specifically, analyses are presented for two compression schemes -- showing one being more overhead-economical and the other computationally lighter at the UE side. Second, to realize the MLE, an alternating direction method of multipliers (ADMM) algorithm is proposed. The algorithm is carefully designed to integrate a sophisticated harmonic retrieval (HR) solver as subroutine, which turns out to be the key of effectively tackling this hard MLE problem.Extensive numerical experiments are conducted to validate the efficacy of our approach.

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Fig. 7. (Semi-real data experiment) The generated color image and detected outlier maps (along with the image using the 30th band) by VOIMU and HELEN. The 30 artificially added outliers are marked by blue circles. The detected outliers by the algorithms are marked by red squares.
Hyperspectral Unmixing Under Endmember Variability: A Variational Inference Framework

July 2024

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48 Reads

This work proposes a variational inference (VI) framework for hyperspectral unmixing in the presence of endmember variability (HU-EV). An EV-accounted noisy linear mixture model (LMM) is considered, and the presence of outliers is also incorporated into the model. Following the marginalized maximum likelihood (MML) principle, a VI algorithmic structure is designed for probabilistic inference for HU-EV. Specifically, a patch-wise static endmember assumption is employed to exploit spatial smoothness and to try to overcome the ill-posed nature of the HU-EV problem. The design facilitates lightweight, continuous optimization-based updates under a variety of endmember priors. Some of the priors, such as the Beta prior, were previously used under computationally heavy, sampling-based probabilistic HU-EV methods. The effectiveness of the proposed framework is demonstrated through synthetic, semi-real, and real-data experiments.


One-Bit MIMO Detection: From Global Maximum-Likelihood Detector to Amplitude Retrieval Approach

July 2024

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43 Reads

As communication systems advance towards the future 6G era, the incorporation of large-scale antenna arrays in base stations (BSs) presents challenges such as increased hardware costs and energy consumption. To address these issues, the use of one-bit analog-to-digital converters (ADCs)/digital-to-analog converters (DACs) has gained significant attentions. This paper focuses on one-bit multiple-input multiple-output (MIMO) detection in an uplink multiuser transmission scenario where the BS employs one-bit ADCs. One-bit quantization retains only the sign information and loses the amplitude information, which poses a unique challenge in the corresponding detection problem. The maximum-likelihood (ML) formulation of one-bit MIMO detection has a challenging likelihood function that hinders the application of many high-performance detectors developed for classic MIMO detection (under high-resolution ADCs). While many approximate methods for the ML detection problem have been studied, it lacks an efficient global algorithm. This paper fills this gap by proposing an efficient branch-and-bound algorithm, which is guaranteed to find the global solution of the one-bit ML MIMO detection problem. Additionally, a new amplitude retrieval (AR) detection approach is developed, incorporating explicit amplitude variables into the problem formulation. The AR approach yields simpler objective functions that enable the development of efficient algorithms offering both global and approximate solutions. The paper also contributes to the computational complexity analysis of both ML and AR detection problems. Extensive simulations are conducted to demonstrate the effectiveness and efficiency of the proposed formulations and algorithms.






Extreme Point Pursuit—Part II: Further Error Bound Analysis and Applications

January 2024

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5 Reads

IEEE Transactions on Signal Processing

In the first part of this study, a convex-constrained penalized formulation was studied for a class of constant modulus (CM) problems. In particular, the error bound techniques were shown to play a vital role in providing exact penalization results. In this second part of the study, we continue our error bound analysis for the cases of partial permutation matrices, size-constrained assignment matrices and non-negative semi-orthogonal matrices. We develop new error bounds and penalized formulations for these three cases, and the new formulations possess good structures for building computationally efficient algorithms. Moreover, we provide numerical results to demonstrate our framework in a variety of applications such as the densest k -subgraph problem, graph matching, size-constrained clustering, non-negative orthogonal matrix factorization and sparse fair principal component analysis.


Citations (54)


... Nonetheless, (Konar and Sidiropoulos 2021) also did not provide an analysis of whether the relaxation is tight and the computational cost of the proposed algorithm can also be relatively high. Recently, (Liu, Liu, and Ma 2024) introduced Extreme Point Pursuit (EXPP), which relaxes the discrete constraint of DkS, and adopts a quadratic penalty based approach combined with a homotopy optimization technique to tackle the relaxed problem. They employed an empirical strategy for selecting the penalty parameter for homotopy optimization, and it remains unclear whether their relaxation is tight. ...

Reference:

Densest k-Subgraph Mining via a Provably Tight Relaxation
Cardinality-Constrained Binary Quadratic Optimization via Extreme Point Pursuit, with Application to the Densest K-Subgraph Problem
  • Citing Conference Paper
  • April 2024

... The merit of Σ∆ precoding is that it allows the use of traditional simple precoding designs (e.g., zero-forcing) that require far less computation power than the discrete optimization designs. Apart from precoding, spatial Σ∆ modulation has found other applications, such as, MIMO detection, channel estimation, power amplifier distortion mitigation, and phase design for reconfigurable intelligent surface [20]- [23]. ...

Transmitting Data Through Reconfigurable Intelligent Surface: A Spatial Sigma-Delta Modulation Approach
  • Citing Conference Paper
  • April 2024

... As direct quantization incurs large distortion, the question is whether we can suitably control the quantization noise to enhance precoding performance. More recently, spatial Σ∆ modulation has been applied to coarsely quantized massive MIMO precoding [17], [18]. Temporal Σ∆ modulation is a classic ADC/DAC structure that features quantization noiseshaping [19]. ...

Spatial Sigma-Delta Modulation for Coarsely Quantized Massive MIMO Downlink: Flexible Designs by Convex Optimization

IEEE Open Journal of Signal Processing

... It is worth noticing that, the variance of the noise δ 2 d is unknown in this paper. In fact, in the field of parameter estimation in system identification and signal processing, the popular estimation methods, including the empirical measure method [6], approximate message passing method [35], and the maximum likelihood (ML) method [38], require noise distributions as priors. In the case where δ 2 d = 0, the noise d k = 0, k ≥ 1 and the linear system (1) is precisely a noise-free system. ...

Accelerated and Deep Expectation Maximization for One-Bit MIMO-OFDM Detection

IEEE Transactions on Signal Processing

... Assuming perfect CSI at the receiver, ML data detection has been investigated for one-bit quantized MIMO systems in [18,19] and extended to one-bit MIMO-OFDM systems in [20]. However, the computational complexity of the method in [18] increases exponentially with the signal constellation size, number of transmit antennas, and overall network dimensions, making it impractical for real-world implementations. ...

An Efficient Global Algorithm for One-Bit Maximum-Likelihood MIMO Detection
  • Citing Conference Paper
  • September 2023

... Furthermore, they proposed a loss function for the training derived from first-order optimality conditions and demonstrated by simulations that their method outperforms an SDP-based method. Meanwhile, the authors of [71], [80], [226], [227] considered a scenario comprising multiple eavesdroppers and a single target. The authors of [71], [80] consider two scenarios, one with and one without eavesdropper's CSI. ...

Secure Integrated Sensing and Communication Downlink Beamforming: A Semidefinite Relaxation Approach With Tightness Guaranteed
  • Citing Conference Paper
  • June 2023

... These are the most commonly used classical detection techniques. The MAP rule applies when the transmitted signals have [49], [50], [51], [52], [53], [44], [54], [55], [56], [57], [58], [59], [60], [61] Channel estimation [62], [63], [64], [65], [66], [67] Precoder Design [68], [69], [70], [71], [72], [73], [74], [75], [76], [77], [78], [79], [80], [81] ISAC [82], [83], [ [93], [94], [95], [45], [96], [97], [98], [99], [ Channel Estimation [109], [110], [111], [112] Precoder design [113], [114], [115], [116] ...

An Explanation of Deep MIMO Detection From a Perspective of Homotopy Optimization

IEEE Open Journal of Signal Processing

... . Moreover, the convergence rate of FedQVR can be improved to O( 1 R ) by choosing S = O(R). In practice, this condition on S is mild assuming that the local data sizes of edge devices are not large or the total number of communication rounds consumed is moderate [53]. ...

Federated Block Coordinate Descent Scheme for Learning Global and Personalized Models
  • Citing Article
  • May 2021

Proceedings of the AAAI Conference on Artificial Intelligence

... To improve the effectiveness of solving the optimization problem (9), we can explore the implementation of the penalty method in the unit modulus optimization problem. This involves relaxing the unit modulus constraint set for solving the CE precoded signal x and incorporating a penalty function into the objective function to ensure that the solution lies on the unit circle [28]. ...

Extreme-Point Pursuit for Unit-Modulus Optimization
  • Citing Conference Paper
  • May 2022

... However, this technique still has the disadvantage of requiring significantly more calculations than linear precoding techniques because the precoding result must be obtained for each symbol duration. In particular, the SLP technique has the disadvantage that when the number of users increases or the number of transmitter antennas increases, its computational complexity increases significantly, making it difficult to actually implement [21][22][23][24][25]. ...

Symbol-Level Precoding Through the Lens of Zero Forcing and Vector Perturbation
  • Citing Article
  • January 2022

IEEE Transactions on Signal Processing