ICIP 2017 | 2017 IEEE International Conference on Image Processing | 17-20 September 2017 | Beijing, China
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MQ-L8: Object Detection III

Session Type: Lecture
Time: Monday, September 18, 16:30 - 18:10
Location: Room 311A
Session Chair: Guijin Wang, Tsinghua University
 
  MQ-L8.1: A HIGHLY ACCURATE FACIAL REGION NETWORK FOR UNCONSTRAINED FACE DETECTION
         Han Shu; Tsinghua University
         Dangdang Chen; Tsinghua University
         Yali Li; Tsinghua University
         Shengjin Wang; Tsinghua University
 
  MQ-L8.2: REAL-TIME OBJECT DETECTION BY A MULTI-FEATURE FULLY CONVOLUTIONAL NETWORK
         Yajing Guo; Beijing University of Posts and Telecommunications
         Xiaoqiang Guo; Academy of Broadcasting Science
         Zhuqing Jiang; Beijing University of Posts and Telecommunications
         Aidong Men; Beijing University of Posts and Telecommunications
         Yun Zhou; Academy of Broadcasting Science
 
  MQ-L8.3: OBJECT LOCALIZATION BY OPTIMIZING CONVOLUTIONAL NEURAL NETWORK DETECTION SCORE USING GENERIC EDGE FEATURES
         Elham Etemad; Dalhousie University
         Qigang Gao; Dalhousie University
 
  MQ-L8.4: GATED ADDITIVE SKIP CONTEXT CONNECTION FOR OBJECT DETECTION
         Haoran Li; Harbin Institute of Technology
         Hongxun Yao; Harbin Institute of Technology
         Yuxin Hou; Harbin Institute of Technology
         Xiaoshuai Sun; Harbin Institute of Technology
 
  MQ-L8.5: RELIABLE PEDESTRIAN DETECTION USING A DEEP NEURAL NETWORK TRAINED ON PEDESTRIAN COUNTS
         Sanjukta Ghosh; Friedrich-Alexander-Universität Erlangen-Nürnberg (FAU) , Siemens Corporate Technology
         Peter Amon; Siemens Corporate Technology
         Andreas Hutter; Siemens Corporate Technology
         André Kaup; Friedrich-Alexander-Universität Erlangen-Nürnberg (FAU)