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Sheng Tang

Researcher at Chinese Academy of Sciences

Publications -  143
Citations -  3507

Sheng Tang is an academic researcher from Chinese Academy of Sciences. The author has contributed to research in topics: Visual Word & TRECVID. The author has an hindex of 25, co-authored 131 publications receiving 2431 citations. Previous affiliations of Sheng Tang include National University of Singapore & Dalian University of Technology.

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Journal ArticleDOI

A density-based method for adaptive LDA model selection

TL;DR: A method of adaptively selecting the best LDA model based on density is proposed, and experiments show that the proposed method can achieve performance matching the best of LDA without manually tuning the number of topics.
Proceedings ArticleDOI

Scale-Adaptive Convolutions for Scene Parsing

TL;DR: The proposed scale-adaptive convolutions are not only differentiable to learn the convolutional parameters and scale coefficients in an end-to-end way, but also of high parallelizability for the convenience of GPU implementation.
Journal ArticleDOI

CGNet: A Light-Weight Context Guided Network for Semantic Segmentation

TL;DR: Wang et al. as mentioned in this paper proposed a Context Guided Network (CGNet) which is a light-weight and efficient network for semantic segmentation, which learns the joint feature of both local feature and surrounding context effectively and efficiently.
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CGNet: A Light-weight Context Guided Network for Semantic Segmentation

TL;DR: This work proposes a novel Context Guided Network (CGNet), which is a light-weight and efficient network for semantic segmentation, and develops CGNet which captures contextual information in all stages of the network.
Proceedings Article

Image caption with global-local attention

TL;DR: This paper proposes a global-local attention (GLA) method by integrating local representation at object-level with global representation at image-level through attention mechanism that can pay more attention to how to predict the salient objects more precisely with high recall while keeping context information atimage-level cocurrently.