Title :
Chart classification by combining deep convolutional networks and deep belief networks
Author :
Xiao Liu;Binbin Tang;Zhenyang Wang;Xianghua Xu;Shiliang Pu;Dapeng Tao;Mingli Song
Author_Institution :
College of Computer Science, Zhejiang University, Hangzhou, China 310027
Abstract :
Chart classification is the foundation of chart analysis and document understanding. In this paper, we propose a novel framework to classify charts by combining convolutional networks and deep belief networks. In the framework, we firstly extract deep hidden features of charts, which are taken from the fully-connected layer of deep convolutional networks. We then utilize deep belief networks to predict the labels of the charts based on their deep hidden features. The convolutional networks are initialized using a large number of natural images and fine-tuned using the chart images to prevent overfitting. Compared with previous methods using primitive feature extraction, the deep features give our framework better scalability and stability. We collect a 5-class chart dataset with more than 5000 images and show that the proposed framework outperforms existing methods greatly.
Keywords :
Stochastic processes
Conference_Titel :
Document Analysis and Recognition (ICDAR), 2015 13th International Conference on
DOI :
10.1109/ICDAR.2015.7333872