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Ngai Wong

Researcher at University of Hong Kong

Publications -  286
Citations -  3010

Ngai Wong is an academic researcher from University of Hong Kong. The author has contributed to research in topics: Tensor & Tensor (intrinsic definition). The author has an hindex of 25, co-authored 268 publications receiving 2552 citations. Previous affiliations of Ngai Wong include Massachusetts Institute of Technology.

Papers
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Ultimate quantum limits on phase measurement.

TL;DR: In this paper, the Susskind-Glogower (SG) phase operator was shown to be the maximum-likelihood (ML) quantum measurement of optical phase for all input states.
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Terahertz optical frequency comb generation and phase locking of an optical parametric oscillator at 665 GHz.

TL;DR: Electro-optic phase modulation at high frequencies in a resonant modulator cavity is achieved by matching the phase velocities of the optical and microwave fields in the modulator substrate and by placing the modulators inside an optical cavity that is resonant for the input optical beam and the generated sidebands.
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Level-set-based inverse lithography for photomask synthesis

TL;DR: This work shows how the inverse lithography problem can be addressed as an obstacle reconstruction problem or an extended nonlinear image restoration problem, and then solved by a level set time-dependent model with finite difference schemes.
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A generalized direct-form delta operator-based IIR filter with minimum noise gain and sensitivity

TL;DR: In this article, an arbitrary order delta operator-based direct-form IIR filter with minimum roundoff noise gain and sensitivity was derived, which utilizes the concept of different coupling coefficients at different branch nodes for better noise gain suppression.
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Robust level-set-based inverse lithography.

TL;DR: This paper focuses on developing level-set based ILT for partially coherent systems, and upon that an expectation-orient optimization framework weighting the cost function by random process condition variables.