Chinese Image Character Recognition using DNN and Machine Simulated Training Samples
Bai JF(白锦峰)
2014
会议名称International Conference on Artificial Neural Networks
会议日期15–19 September 2014
会议地点德国汉堡
摘要

Inspired by the success of DNN models in solving challenging visual problems, this paper studies the task of Chinese Image Charac- ter Recognition (ChnICR) by leveraging DNN model and huge machine simulated training samples. To generate the samples, clean machine born Chinese characters are extracted and are plus with common variations of image characters such as changes in size, front, boldness, shift and complex backgrounds, which in total produces over 28 million character images, covering the vast majority of occurrences of Chinese character in real life images. Based on these samples, a DNN training procedure is employed to learn the appropriate Chinese character recognizer, where the width and depth of DNN, and the volume of samples are empirically discussed. Parallel to this, a holistic Chinese image text recognition sys- tem is developed. Encouraging experimental results on text from 13 TV channels demonstrate the effectiveness of the learned recognizer, from which significant performance gains are observed compared to the base- line system.


关键词Chinese Image Character Recognition Deep Neural Net- Work Image Text Video Text
文献类型会议论文
条目标识符http://ir.ia.ac.cn/handle/173211/41209
专题复杂系统认知与决策实验室_听觉模型与认知计算
推荐引用方式
GB/T 7714
Bai JF. Chinese Image Character Recognition using DNN and Machine Simulated Training Samples[C],2014.
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