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An Improved Deep Learning Network Structure for Multitask Text Implication Translation Character Recognition
Author(s) -
Xiaoli Ma,
Hongyan Xu,
Xiaoqian Zhang,
Haoyong Wang
Publication year - 2021
Publication title -
complexity
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.447
H-Index - 61
eISSN - 1099-0526
pISSN - 1076-2787
DOI - 10.1155/2021/6617799
Subject(s) - computer science , artificial intelligence , human multitasking , filter (signal processing) , convolutional neural network , character (mathematics) , deep learning , sliding window protocol , translation (biology) , pattern recognition (psychology) , speech recognition , natural language processing , window (computing) , computer vision , psychology , biochemistry , chemistry , geometry , mathematics , messenger rna , cognitive psychology , gene , operating system
With the rapid development of artificial intelligence technology, multitasking textual translation has attracted more and more attention. Especially after the application of deep learning technology, the performance of multitask translation text detection and recognition has been greatly improved. However, because multitasking contains the interference problem faced by the translated text, there is a big gap between recognition performance and actual application requirements. Aiming at multitasking and translation text detection, this paper proposes a text localization method based on multichannel multiscale detection of the largest stable extreme value region and cascade filtering. This paper selects the appropriate color channel and scale to extract the maximum stable extreme value area as the character candidate area and designs a cascaded filter from coarse to fine to remove false detections. The coarse filter is based on some simple morphological features and stroke width features, and the fine filter is trained by a two-recognition convolutional neural network. The remaining character candidate regions are merged into horizontal or multidirectional character strings through the graph model. The experimental results on the text data set prove the effectiveness of the improved deep learning network character model and the feasibility of the textual implication translation analysis method based on this model. Among them, the text contains translation character recognition results prove that the model has good description ability. The characteristics of the model determine that this method is not sensitive to the scale of the sliding window, so it performs better than the existing typical methods in retrieval tasks.

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