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Junhui Hou

Researcher at City University of Hong Kong

Publications -  236
Citations -  6392

Junhui Hou is an academic researcher from City University of Hong Kong. The author has contributed to research in topics: Computer science & Point cloud. The author has an hindex of 27, co-authored 192 publications receiving 2712 citations. Previous affiliations of Junhui Hou include Northwestern Polytechnical University & Southeast University.

Papers
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Journal ArticleDOI

Joint Optimization for Pairwise Constraint Propagation

TL;DR: A joint PCP model for constrained SC is proposed by simultaneously learning a propagation matrix and an affinity matrix that is formulated as a bounded symmetric graph regularized low-rank matrix completion problem and exhibits an ideal appearance under some conditions.
Proceedings ArticleDOI

Restoring corrupted motion capture data via jointly low-rank matrix completion

TL;DR: This paper presents a practical and highly efficient algorithm for restoring the missing mocap data based on jointly low-rank matrix completion, where the missing data is recovered by solving the two matrices using the alternating direction method of multipliers algorithm.
Book ChapterDOI

Random forest with suppressed leaves for hough voting

TL;DR: The experimental results demonstrate that by suppressing unreliable leaf nodes, it not only improves prediction accuracy, but also reduces both prediction time cost and model complexity of the random forest.
Posted Content

Low-latency compression of mocap data using learned spatial decorrelation transform

TL;DR: Wang et al. as discussed by the authors proposed a learned orthogonal transform (LOT) to reduce the spatial redundancy of human motion capture data, which was formulated as minimizing square error regularized by orthogonality and sparsity and solved via alternating iteration.
Posted Content

Deep Spatial-angular Regularization for Compressive Light Field Reconstruction over Coded Apertures

TL;DR: A novel learning-based framework for the reconstruction of high-quality LFs from acquisitions via learned coded apertures that incorporates the measurement observation into the deep learning framework elegantly to avoid relying entirely on data-driven priors for LF reconstruction.