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Weiyuan Shao

Researcher at Chinese Academy of Sciences

Publications -  8
Citations -  1466

Weiyuan Shao is an academic researcher from Chinese Academy of Sciences. The author has contributed to research in topics: Minimum bounding box & Facial recognition system. The author has an hindex of 5, co-authored 8 publications receiving 1023 citations.

Papers
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Journal ArticleDOI

Arbitrary-Oriented Scene Text Detection via Rotation Proposals

TL;DR: The Rotation Region Proposal Networks are designed to generate inclined proposals with text orientation angle information that are adapted for bounding box regression to make the proposals more accurately fit into the text region in terms of the orientation.
Journal ArticleDOI

Arbitrary-Oriented Scene Text Detection via Rotation Proposals

TL;DR: RRPN as mentioned in this paper proposes a rotation region proposal network to generate inclined text proposals with text orientation angle information, which is then adapted for bounding box regression to make the proposals more accurately fit into the text region in terms of the orientation.
Proceedings ArticleDOI

Face Recognition via Active Annotation and Learning

TL;DR: An active annotation and learning framework for the face recognition task is introduced and a deep neural network is iteratively trained to choose the examples for further manual annotation.
Patent

Training method/system of intelligent model, computer readable storage medium and terminal

TL;DR: In this article, the authors provided a training method/system of an intelligent model, a computer readable storage medium and a terminal, and the training method includes the following steps that: initial model training is performed on an inputted first data set and annotation information related to a training task, so that a reference model can be obtained; new data are added and are merged in the first dataset and a second dataset can be formed; data testing and value assessment are performed on the second dataset so that data of which the annotation values are larger than a preset annotation value are selected to form a
Posted Content

Crowd Counting with Density Adaption Networks.

TL;DR: A lightweight deep learning framework that can automatically estimate the crowd density level and adaptively choose between different counter networks that are explicitly trained for different density domains is proposed.