Image Segmentation Techniques for Intelligent Monitoring of Putonghua Examinations

Image recognition and image processing usually contain the technique of image segmentation. Excellent segmentation results can directly affect the accuracy of image recognition and processing. The essence of image segmentation is to segment each frame of a certain image or a video into multiple spec...

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Main Author: Hui Liu
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Advances in Mathematical Physics
Online Access:http://dx.doi.org/10.1155/2022/4302666
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author Hui Liu
author_facet Hui Liu
author_sort Hui Liu
collection DOAJ
description Image recognition and image processing usually contain the technique of image segmentation. Excellent segmentation results can directly affect the accuracy of image recognition and processing. The essence of image segmentation is to segment each frame of a certain image or a video into multiple specific objects or regions and represent them with different labels. This paper focuses on the segmentation results obtained in image segmentation of images used for intelligent monitoring of Mandarin exams are usually visualized for image analysis. In this paper, we first investigate the performance improvement techniques for semantic segmentation in the image segmentation task for intelligent monitoring of Mandarin exams, improve the pixel classification capability by performing semantic migration, and, for the first time, extend the dataset substantially by style transformation to improve the model’s recognition of advanced features. In addition, to further address the shortcomings of the dataset, this paper improves the performance of image segmentation using synthetic datasets by investigating synthetic dataset image segmentation improvement techniques that reduce the reliance on manually annotated datasets. Image segmentation techniques continue to advance, and there are even thousands of commonly used segmentation methods for image segmentation development to date. Among them, they can be broadly classified as region-based segmentation methods, threshold-based segmentation methods, edge-based segmentation methods, specific theory-based segmentation methods, and deep learning-based segmentation methods. However, the methods used in this paper have all been experimentally demonstrated to improve the effectiveness of the techniques and proved to outperform other existing methods in the same field in the publicly available datasets LSUN, Cityscapes, and GTA5 datasets, respectively.
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spelling doaj-art-8a8acd14620c487f8f57cc16a6789df82025-08-20T02:09:18ZengWileyAdvances in Mathematical Physics1687-91392022-01-01202210.1155/2022/4302666Image Segmentation Techniques for Intelligent Monitoring of Putonghua ExaminationsHui Liu0Department of the Office of Academic AffairsImage recognition and image processing usually contain the technique of image segmentation. Excellent segmentation results can directly affect the accuracy of image recognition and processing. The essence of image segmentation is to segment each frame of a certain image or a video into multiple specific objects or regions and represent them with different labels. This paper focuses on the segmentation results obtained in image segmentation of images used for intelligent monitoring of Mandarin exams are usually visualized for image analysis. In this paper, we first investigate the performance improvement techniques for semantic segmentation in the image segmentation task for intelligent monitoring of Mandarin exams, improve the pixel classification capability by performing semantic migration, and, for the first time, extend the dataset substantially by style transformation to improve the model’s recognition of advanced features. In addition, to further address the shortcomings of the dataset, this paper improves the performance of image segmentation using synthetic datasets by investigating synthetic dataset image segmentation improvement techniques that reduce the reliance on manually annotated datasets. Image segmentation techniques continue to advance, and there are even thousands of commonly used segmentation methods for image segmentation development to date. Among them, they can be broadly classified as region-based segmentation methods, threshold-based segmentation methods, edge-based segmentation methods, specific theory-based segmentation methods, and deep learning-based segmentation methods. However, the methods used in this paper have all been experimentally demonstrated to improve the effectiveness of the techniques and proved to outperform other existing methods in the same field in the publicly available datasets LSUN, Cityscapes, and GTA5 datasets, respectively.http://dx.doi.org/10.1155/2022/4302666
spellingShingle Hui Liu
Image Segmentation Techniques for Intelligent Monitoring of Putonghua Examinations
Advances in Mathematical Physics
title Image Segmentation Techniques for Intelligent Monitoring of Putonghua Examinations
title_full Image Segmentation Techniques for Intelligent Monitoring of Putonghua Examinations
title_fullStr Image Segmentation Techniques for Intelligent Monitoring of Putonghua Examinations
title_full_unstemmed Image Segmentation Techniques for Intelligent Monitoring of Putonghua Examinations
title_short Image Segmentation Techniques for Intelligent Monitoring of Putonghua Examinations
title_sort image segmentation techniques for intelligent monitoring of putonghua examinations
url http://dx.doi.org/10.1155/2022/4302666
work_keys_str_mv AT huiliu imagesegmentationtechniquesforintelligentmonitoringofputonghuaexaminations