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Chen Qian

Researcher at SenseTime

Publications -  207
Citations -  10106

Chen Qian is an academic researcher from SenseTime. The author has contributed to research in topics: Computer science & Pose. The author has an hindex of 30, co-authored 125 publications receiving 5669 citations. Previous affiliations of Chen Qian include Shanghai Jiao Tong University & The Chinese University of Hong Kong.

Papers
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Journal ArticleDOI

Single image portrait relighting via explicit multiple reflectance channel modeling

TL;DR: A novel framework that explicitly models multiple reflectance channels for single image portrait relighting, including the facial albedo, geometry as well as two lighting effects, i.e., specular and shadow is proposed.
Proceedings ArticleDOI

Aggregation via Separation: Boosting Facial Landmark Detector With Semi-Supervised Style Translation

TL;DR: In this paper, the authors leverage disentangled style and shape space of each individual to augment existing structures via style translation, which leads to further notable improvement in facial landmark detection.
Proceedings ArticleDOI

3D Sketch-Aware Semantic Scene Completion via Semi-Supervised Structure Prior

TL;DR: A new geometry-based strategy to embed depth information with low-resolution voxel representation, which could still be able to encode sufficient geometric information, e.g., room layout, object’s sizes and shapes, to infer the invisible areas of the scene with well structure-preserving details is proposed.
Proceedings Article

A Cascaded Inception of Inception Network With Attention Modulated Feature Fusion for Human Pose Estimation.

TL;DR: This paper presents three novel techniques step by step to efficiently utilize different levels of features for human pose estimation, and an attention mechanism is proposed to adjust the importances of individual levels according to the context.
Book ChapterDOI

Differentiable Hierarchical Graph Grouping for Multi-Person Pose Estimation

TL;DR: Wang et al. as mentioned in this paper proposed a hierarchical graph clustering method to learn the graph grouping in bottom-up multi-person pose estimation task, which takes human keypoint candidates as graph nodes and clusters keypoints in a multi-layer graph neural network model.