Arabic text detection in videos using neural and boosting-based approaches: Application to video indexing

Image Processing(2014)

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摘要
Text detection in videos is a primary step in any semantic-based video analysis systems. In this work, we propose and compare three machine learning-based methods for embedded Arabic text detection. These methods are able to detect Arabic text regions without any prior knowledge and without any pre-processing. The first method relies on a convolution neural network. The two other methods are based on a multi-exit asymmetric boosting cascade. The proposed methods have been extensively evaluated on a large database of Arabic TV channel videos. Experiments highlight a good detection rate of all methods even though neural network-based method outperforms the other ones in terms of recall/precision and computation time.
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关键词
convolution,learning (artificial intelligence),neural nets,text analysis,text detection,video signal processing,Arabic TV channel videos,boosting-based approaches,convolution neural network,embedded Arabic text detection,machine learning-based methods,multi-exit asymmetric boosting cascade,neural network-based method,semantic-based video analysis systems,video indexing,Arabic text detection,Convolutional Neural Network,multi-exit asymmetric boosting,news video indexing
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