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WA.P6: Deep Learning for Detection and Classification II

Session Type: Poster
Time: Wednesday, September 28, 10:30 - 11:50
Location: Room 301 CD: Poster Area 6
Session Chair: Ray Ptucha, Rochester Institute of Technology
 
Presented 10:30 - 11:00
 
   WA.P6.1: JOINT VISUAL DENOISING AND CLASSIFICATION USING DEEP LEARNING
         Gang Chen; SUNY at Buffalo
         Yawei Li; University of Electronic Science and Technology of China
         Sargur Srihari; SUNY at Buffalo
 
   WA.P6.2: MAX-MIN CONVOLUTIONAL NEURAL NETWORKS FOR IMAGE CLASSIFICATION
         Michael Blot; University Pierre and Marie Curie
         Matthieu Cord; Université Pierre et Marie Curie
         Nicolas Thome; Université Pierre et Marie Curie
 
   WA.P6.3: FINE-TO-COARSE KNOWLEDGE TRANSFER FOR LOW-RES IMAGE CLASSIFICATION
         Xingchao Peng; Umass Lowell
         Judy Hoffman; University of California, Berkeley
         Stella X. Yu; International Computer Science Institute
         Kate Saenko; Umass Lowell
 
   WA.P6.4: ADAPTIVE DATA AUGMENTATION FOR IMAGE CLASSIFICATION
         Alhussein Fawzi; Ecole Polytechnique Fédérale de Lausanne
         Horst Samulowitz; IBM Thomas J. Watson Research Center
         Deepak Turaga; IBM Thomas J. Watson Research Center
         Pascal Frossard; Ecole Polytechnique Fédérale de Lausanne
 
   WA.P6.5: FINE TUNING CNNS WITH SCARCE TRAINING DATA - ADAPTING IMAGENET TO ART EPOCH CLASSIFICATION
         Christian Hentschel; Hasso Plattner Institute for Software Systems Engineering
         Timur Pratama Wiradarma; Hasso Plattner Institute for Software Systems Engineering
         Harald Sack; Hasso Plattner Institute for Software Systems Engineering
 
  WA.P6.6: PRE-TRAINING CONVOLUTIONAL NEURAL NETWORKS: IS FINE-TUNE ALWAYS PREQUISITE?
         Wenlei Wu; Xiamen University
         Ruiwen Wu; Xiamen University
         Xinghao Ding; Xiamen University
         Yue Huang; Xiamen University
 
   WA.P6.7: CECI N'EST PAS UNE PIPE: A DEEP CONVOLUTIONAL NETWORK FOR FINE-ART PAINTINGS CLASSIFICATION
         Wei Ren Tan; Shinshu University
         Chee Seng Chan; University of Malaya
         Hernán E. Aguirre; Shinshu University
         Kiyoshi Tanaka; Shinshu University
 
   WA.P6.8: ROAD CRACK DETECTION USING DEEP CONVOLUTIONAL NEURAL NETWORK
         Lei Zhang; Temple University
         Fan Yang; Temple University
         Yimin Daniel Zhang; Temple University
         Ying Julie Zhu; Temple University
 
Presented 11:00 - 11:30
 
   WA.P6.9: PLANKTON CLASSIFICATION ON IMBALANCED LARGE SCALE DATABASE VIA CONVOLUTIONAL NEURAL NETWORKS WITH TRANSFER LEARNING
         Hansang Lee; Korea Advanced Institute of Science and Technology
         Minseok Park; Korea Advanced Institute of Science and Technology
         Junmo Kim; Korea Advanced Institute of Science and Technology
 
   WA.P6.10: FINE-GRAINED MAIZE CULTIVAR IDENTIFICATION USING FILTER-SPECIFIC CONVOLUTIONAL ACTIVATIONS
         Hao Lu; Huazhong University of Science and Technology
         Zhiguo Cao; Huazhong University of Science and Technology
         Yang Xiao; Huazhong University of Science and Technology
         Zhiwen Fang; Huazhong University of Science and Technology
         Yanjun Zhu; Huazhong University of Science and Technology
 
 
End-of-Session Forum (all presenters available for discussion) 11:30 - 11:50