Xiang-Jun Bai


Ontology type: schema:Person     


Person Info

NAME

Xiang-Jun

SURNAME

Bai

Publications in SciGraph latest 50 shown

  • 2021-09-02 Scene Text Detection with Scribble Line in DOCUMENT ANALYSIS AND RECOGNITION – ICDAR 2021
  • 2021-01-30 DeepFlux for Skeleton Detection in the Wild in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2020-11-30 AutoSTR: Efficient Backbone Search for Scene Text Recognition in COMPUTER VISION – ECCV 2020
  • 2020-11-27 Mask TextSpotter v3: Segmentation Proposal Network for Robust Scene Text Spotting in COMPUTER VISION – ECCV 2020
  • 2020-11-16 EPNet: Enhancing Point Features with Image Semantics for 3D Object Detection in COMPUTER VISION – ECCV 2020
  • 2020-11-09 Intra-class Feature Variation Distillation for Semantic Segmentation in COMPUTER VISION – ECCV 2020
  • 2020-01-21 Cross-sectional study of the educational background and trauma knowledge of trainees in the “China trauma care training” program in MILITARY MEDICAL RESEARCH
  • 2020-01-15 SynthText3D: synthesizing scene text images from 3D virtual worlds in SCIENCE CHINA INFORMATION SCIENCES
  • 2019-11-11 Feature context learning for human parsing in SCIENCE CHINA INFORMATION SCIENCES
  • 2018-10-09 Mask TextSpotter: An End-to-End Trainable Neural Network for Spotting Text with Arbitrary Shapes in COMPUTER VISION – ECCV 2018
  • 2018-10-06 Adaptively Transforming Graph Matching in COMPUTER VISION – ECCV 2018
  • 2018-10-06 Hard-Aware Point-to-Set Deep Metric for Person Re-identification in COMPUTER VISION – ECCV 2018
  • 2018-10 MMP-1 Over-expression Promotes Malignancy and Stem-Like Properties of Human Osteosarcoma MG-63 Cells In Vitro in CURRENT MEDICAL SCIENCE
  • 2017-12-30 Joint Classification Loss and Histogram Loss for Sketch-Based Image Retrieval in IMAGE AND GRAPHICS
  • 2017-07-14 Preface in JOURNAL OF COMPUTER SCIENCE AND TECHNOLOGY
  • 2017-07-14 Directional Edge Boxes: Exploiting Inner Normal Direction Cues for Effective Object Proposal Generation in JOURNAL OF COMPUTER SCIENCE AND TECHNOLOGY
  • 2016-09-17 Smooth Neighborhood Structure Mining on Multiple Affinity Graphs with Applications to Context-Sensitive Similarity in COMPUTER VISION – ECCV 2016
  • 2016-01-25 Similarity Fusion for Visual Tracking in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2016 Scale-Space SIFT Flow in DENSE IMAGE CORRESPONDENCES FOR COMPUTER VISION
  • 2015-06-22 Scene text detection and recognition: recent advances and future trends in FRONTIERS OF COMPUTER SCIENCE
  • 2015-04-16 Multiple Stage Residual Model for Accurate Image Classification in COMPUTER VISION – ACCV 2014
  • 2014-04-08 Cyclooxygenase-2 blockade inhibits accumulation and function of myeloid-derived suppressor cells and restores T cell response after traumatic stress in CURRENT MEDICAL SCIENCE
  • 2014 Shape Recognition by Combining Contour and Skeleton into a Mid-Level Representation in PATTERN RECOGNITION
  • 2014 Human Detection Using Learned Part Alphabet and Pose Dictionary in COMPUTER VISION – ECCV 2014
  • 2013-01-08 Skeleton pruning as trade-off between skeleton simplicity and reconstruction error in SCIENCE CHINA INFORMATION SCIENCES
  • 2013 One-Class Multiple Instance Learning via Robust PCA for Common Object Discovery in COMPUTER VISION – ACCV 2012
  • 2012-07-06 Densifying Distance Spaces for Shape and Image Retrieval in JOURNAL OF MATHEMATICAL IMAGING AND VISION
  • 2012 Multiple Feature Fusion for Object Tracking in INTELLIGENT SCIENCE AND INTELLIGENT DATA ENGINEERING
  • 2012 Binarization of Gray-Level Images Based on Skeleton Region Growing in DIGITAL GEOMETRY ALGORITHMS
  • 2011 Shape Matching and Recognition Using Group-Wised Points in ADVANCES IN IMAGE AND VIDEO TECHNOLOGY
  • 2010 Co-transduction for Shape Retrieval in COMPUTER VISION – ECCV 2010
  • 2010 Skeleton Graph Matching Based on Critical Points Using Path Similarity in COMPUTER VISION – ACCV 2009
  • 2010 Object Recognition Using Junctions in COMPUTER VISION – ECCV 2010
  • 2009 Contour Grouping with Partial Shape Similarity in ADVANCES IN IMAGE AND VIDEO TECHNOLOGY
  • 2008 Improving Shape Retrieval by Learning Graph Transduction in COMPUTER VISION – ECCV 2008
  • 2008 Symmetry of Shapes Via Self-similarity in ADVANCES IN VISUAL COMPUTING
  • 2008 Computing Stable Skeletons with Particle Filters in PRICAI 2008: TRENDS IN ARTIFICIAL INTELLIGENCE
  • 2007-01-01 Discrete Skeleton Evolution in ENERGY MINIMIZATION METHODS IN COMPUTER VISION AND PATTERN RECOGNITION
  • 2007-01-01 Shape Classification Based on Skeleton Path Similarity in ENERGY MINIMIZATION METHODS IN COMPUTER VISION AND PATTERN RECOGNITION
  • 2006 Skeleton Pruning by Contour Partitioning in DISCRETE GEOMETRY FOR COMPUTER IMAGERY
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