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Institute of Automation, Chinese Academy of Science
Fully Convolutional Network Based Skeletonization for Handwritten Chinese Characters
Wang, Tie-Qiang (Institute of Automation, Chinese Academy of Science) | Liu, Cheng-Lin (Institute of Automation, Chinese Academy of Science)
Structural analysis of handwritten characters relies heavily on robust skeletonization of strokes, which has not been solved well by previous thinning methods. This paper presents an effective fully convolutional network (FCN) to extract stroke skeletons for handwritten Chinese characters. We combine the holistically-nested architecture with regressive dense upsampling convolution (rDUC) and recently proposed hybrid dilated convolution (HDC) to generate pixel-level prediction for skeleton extraction. We evaluate our method on character images synthesized from the online handwritten dataset CASIA-OLHWDB and achieve higher accuracy of skeleton pixel detection than traditional thinning algorithms. We also conduct skeleton based character recognition experiments using convolutional neural network (CNN) classifiers on offline/online handwritten datasets, and obtained comparable accuracies with recognition on original character images. This implies the skeletonization loses little shape information.
A Probabilistic Soft Logic Based Approach to Exploiting Latent and Global Information in Event Classification
Liu, Shulin (Institute of Automation, Chinese Academy of Science) | Liu, Kang (Institute of Automation, Chinese Academy of Science) | He, Shizhu (Institute of Automation, Chinese Academy of Science) | Zhao, Jun (Institute of Automation, Chinese Academy of Science)
Global information such as event-event association, and latent local information such as fine-grained entity types, are crucial to event classification. However, existing methods typically focus on sophisticated local features such as part-of-speech tags, either fully or partially ignoring the aforementioned information. By contrast, this paper focuses on fully employing them for event classification. We notice that it is difficult to encode some global information such as event-event association for previous methods. To resolve this problem, we propose a feasible approach which encodes global information in the form of logic using Probabilistic Soft Logic model. Experimental results show that, our proposed approach advances state-of-the-art methods, and achieves the best F1 score to date on the ACE data set.