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Chunxiao Liu

Researcher at SenseTime

Publications -  38
Citations -  2390

Chunxiao Liu is an academic researcher from SenseTime. The author has contributed to research in topics: Computer science & Metric (mathematics). The author has an hindex of 14, co-authored 38 publications receiving 1668 citations. Previous affiliations of Chunxiao Liu include Huazhong University of Science and Technology & Tsinghua University.

Papers
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Proceedings Article

SNAS: stochastic neural architecture search

TL;DR: SNAS as mentioned in this paper reformulates the architecture search problem as an optimization problem on parameters of a joint distribution for the search space in a cell and proposes a search gradient to leverage the gradient information in generic differentiable loss for architecture search.
Proceedings ArticleDOI

Learning Lightweight Lane Detection CNNs by Self Attention Distillation

TL;DR: Self Attention Distillation (SAD) as discussed by the authors is a knowledge distillation approach, which allows a model to learn from itself and gains substantial improvement without any additional supervision or labels.
Book ChapterDOI

Person re-identification: what features are important?

TL;DR: This study shows that certain features play more important role than others under different circumstances, and proposes a novel unsupervised approach for learning a bottom-up feature importance, so features extracted from different individuals are weighted adaptively driven by their unique and inherent appearance attributes.
Posted Content

SNAS: Stochastic Neural Architecture Search

TL;DR: It is proved that this search gradient optimizes the same objective as reinforcement-learning-based NAS, but assigns credits to structural decisions more efficiently, and is further augmented with locally decomposable reward to enforce a resource-efficient constraint.
Proceedings ArticleDOI

Person re-identification by manifold ranking

TL;DR: This study shows that it is possible to propagate the query information along the unlabelled data manifold in an unsupervised way to obtain robust ranking results, and demonstrates that the performance of existing supervised metric learning methods can be significantly boosted once integrated into the proposed manifold ranking-based framework.