DocumentCode
1949812
Title
A new unsupervised convolutional neural network model for Chinese scene text detection
Author
Xiaohang Ren ; Kai Chen ; Xiaokang Yang ; Yi Zhou ; Jianhua He ; Jun Sun
fYear
2015
fDate
12-15 July 2015
Firstpage
428
Lastpage
432
Abstract
As one of the most popular deep learning models, convolution neural network (CNN) has achieved huge success in image information extraction. Traditionally CNN is trained by supervised learning method with labeled data and used as a classifier by adding a classification layer in the end. Its capability of extracting image features is largely limited due to the difficulty of setting up a large training dataset. In this paper, we propose a new unsupervised learning CNN model, which uses a so-called convolutional sparse auto-encoder (CSAE) algorithm pre-train the CNN. Instead of using labeled natural images for CNN training, the CSAE algorithm can be used to train the CNN with unlabeled artificial images, which enables easy expansion of training data and unsupervised learning. The CSAE algorithm is especially designed for extracting complex features from specific objects such as Chinese characters. After the features of articficial images are extracted by the CSAE algorithm, the learned parameters are used to initialize the first CNN convolutional layer, and then the CNN model is fine-trained by scene image patches with a linear classifier. The new CNN model is applied to Chinese scene text detection and is evaluated with a multilingual image dataset, which labels Chinese, English and numerals texts separately. More than 10% detection precision gain is observed over two CNN models.
Keywords
feature extraction; image classification; neural nets; object detection; unsupervised learning; CSAE algorithm; Chinese scene text detection; classification layer; convolutional sparse auto-encoder algorithm; deep learning models; image features extraction; image information extraction; labeled data classification; linear classifier; multilingual image dataset; scene image patches; supervised learning method; unsupervised convolutional neural network model; unsupervised learning CNN model; Convolutional codes; Detection algorithms; Feature extraction; Machine learning; Neural networks; Training; Unsupervised learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Signal and Information Processing (ChinaSIP), 2015 IEEE China Summit and International Conference on
Conference_Location
Chengdu
Type
conf
DOI
10.1109/ChinaSIP.2015.7230438
Filename
7230438
Link To Document