Research on Texture Feature Recognition of Regional Architecture Based on Visual Saliency Model

Architecture is a representative of a city. It is also a spatial carrier of urban culture. Identifying the architectural features in a city can help with urban transformation and promote urban development. The use of visual saliency models in regional architectural texture recognition can effectivel...

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Main Authors: Jing Liu, Yuxuan Song, Lingxiang Guo, Mengting Hu
Format: Article
Language:English
Published: MDPI AG 2023-11-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/12/22/4581
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author Jing Liu
Yuxuan Song
Lingxiang Guo
Mengting Hu
author_facet Jing Liu
Yuxuan Song
Lingxiang Guo
Mengting Hu
author_sort Jing Liu
collection DOAJ
description Architecture is a representative of a city. It is also a spatial carrier of urban culture. Identifying the architectural features in a city can help with urban transformation and promote urban development. The use of visual saliency models in regional architectural texture recognition can effectively enhance the effectiveness of regional architectural texture recognition. In this paper, the improved visual saliency model first enhances the texture images of regional buildings through histogram enhancement technology, and uses visual saliency algorithms to extract the visual saliency of the texture features of regional buildings. Then, combined with the maximum interclass difference method of threshold segmentation, the visual saliency image is segmented to achieve accurate target recognition. Finally, the feature factor iteration of the Bag of Visual Words model and the function classification of support vector machines were used to complete the recognition of regional architectural texture features. Through experimental verification, the constructed regional architectural texture feature recognition method based on visual saliency model can effectively enhance the recognition image. This method performs well in boundary contour separation and visual saliency, with an average recognition rate of 0.814 for texture features in different building scenes, indicating high stability.
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spelling doaj.art-2a3ac59ed53c467698dc0291bd88f8682023-11-24T14:39:04ZengMDPI AGElectronics2079-92922023-11-011222458110.3390/electronics12224581Research on Texture Feature Recognition of Regional Architecture Based on Visual Saliency ModelJing Liu0Yuxuan Song1Lingxiang Guo2Mengting Hu3School of Civil Engineering and Architecture, Xiamen University of Technology, Xiamen 361024, ChinaCollege of Forestry and Grassland, Jilin Agriculture University, Changchun 130118, ChinaThe Arts and Design College Xiamen, Fuzhou University, Xiamen 361021, ChinaSchool of Civil Engineering and Architecture, Xiamen University of Technology, Xiamen 361024, ChinaArchitecture is a representative of a city. It is also a spatial carrier of urban culture. Identifying the architectural features in a city can help with urban transformation and promote urban development. The use of visual saliency models in regional architectural texture recognition can effectively enhance the effectiveness of regional architectural texture recognition. In this paper, the improved visual saliency model first enhances the texture images of regional buildings through histogram enhancement technology, and uses visual saliency algorithms to extract the visual saliency of the texture features of regional buildings. Then, combined with the maximum interclass difference method of threshold segmentation, the visual saliency image is segmented to achieve accurate target recognition. Finally, the feature factor iteration of the Bag of Visual Words model and the function classification of support vector machines were used to complete the recognition of regional architectural texture features. Through experimental verification, the constructed regional architectural texture feature recognition method based on visual saliency model can effectively enhance the recognition image. This method performs well in boundary contour separation and visual saliency, with an average recognition rate of 0.814 for texture features in different building scenes, indicating high stability.https://www.mdpi.com/2079-9292/12/22/4581visual saliencyregional architecturefeature recognitionfeature extractionimage enhancement
spellingShingle Jing Liu
Yuxuan Song
Lingxiang Guo
Mengting Hu
Research on Texture Feature Recognition of Regional Architecture Based on Visual Saliency Model
Electronics
visual saliency
regional architecture
feature recognition
feature extraction
image enhancement
title Research on Texture Feature Recognition of Regional Architecture Based on Visual Saliency Model
title_full Research on Texture Feature Recognition of Regional Architecture Based on Visual Saliency Model
title_fullStr Research on Texture Feature Recognition of Regional Architecture Based on Visual Saliency Model
title_full_unstemmed Research on Texture Feature Recognition of Regional Architecture Based on Visual Saliency Model
title_short Research on Texture Feature Recognition of Regional Architecture Based on Visual Saliency Model
title_sort research on texture feature recognition of regional architecture based on visual saliency model
topic visual saliency
regional architecture
feature recognition
feature extraction
image enhancement
url https://www.mdpi.com/2079-9292/12/22/4581
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AT mengtinghu researchontexturefeaturerecognitionofregionalarchitecturebasedonvisualsaliencymodel