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Qiang Zhou

Researcher at Tsinghua University

Publications -  7
Citations -  458

Qiang Zhou is an academic researcher from Tsinghua University. The author has contributed to research in topics: Face (geometry) & Deblurring. The author has an hindex of 5, co-authored 7 publications receiving 264 citations.

Papers
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Proceedings ArticleDOI

Look at Boundary: A Boundary-Aware Face Alignment Algorithm

TL;DR: Wu et al. as mentioned in this paper proposed a boundary-aware face alignment algorithm by utilizing boundary lines as the geometric structure of a human face to help facial landmark localisation, which achieves 3.49% mean error on 300-W Fullset, which outperforms state-of-the-art methods by a large margin.
Proceedings ArticleDOI

TransMoMo: Invariance-Driven Unsupervised Video Motion Retargeting

TL;DR: A lightweight video motion retargeting approach TransMoMo that is capable of transferring motion of a person in a source video realistically to another video of a target person by exploiting invariance properties of three orthogonal factors of variation including motion, structure, and view-angle.
Posted Content

FAB: A Robust Facial Landmark Detection Framework for Motion-Blurred Videos

TL;DR: A framework named FAB is proposed that takes advantage of structure consistency in the temporal dimension for facial landmark detection in motion-blurred videos, and a structure predictor is proposed to predict the missing face structural information temporally, which serves as a geometry prior.
Proceedings ArticleDOI

FAB: A Robust Facial Landmark Detection Framework for Motion-Blurred Videos

TL;DR: Sun et al. as mentioned in this paper proposed a structure predictor to predict the missing face structural information temporally, which serves as a geometry prior for facial landmark detection in motion-blurred videos.
Journal ArticleDOI

Deep coupling neural network for robust facial landmark detection

TL;DR: It is shown that model robustness can be significantly improved by leveraging rich variations within and between different datasets, and a novel Deep Coupling Neural Network (DCNN) is proposed, which consists of two strong coupling sub-networks, e.g., Dataset-Across Network (DA-Net) and Candidate-Decision Network (CD-Net).