Deep Learning Image Feature Recognition Algorithm for Judgment on the Rationality of Landscape Planning and Design

This paper uses an improved deep learning algorithm to judge the rationality of the design of landscape image feature recognition. The preprocessing of the image is proposed to enhance the data. The deficiencies in landscape feature extraction are further addressed based on the new model. Then, the...

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Main Author: Bin Hu
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/9921095
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spelling doaj-647d3f6bc158476c861f6baf96b351562021-05-10T00:26:12ZengHindawi-WileyComplexity1099-05262021-01-01202110.1155/2021/9921095Deep Learning Image Feature Recognition Algorithm for Judgment on the Rationality of Landscape Planning and DesignBin Hu0Xinyang Vocational and Technical CollegeThis paper uses an improved deep learning algorithm to judge the rationality of the design of landscape image feature recognition. The preprocessing of the image is proposed to enhance the data. The deficiencies in landscape feature extraction are further addressed based on the new model. Then, the two-stage training method of the model is used to solve the problems of long training time and convergence difficulties in deep learning. Innovative methods for zoning and segmentation training of landscape pattern features are proposed, which makes model training faster and generates more creative landscape patterns. Because of the impact of too many types of landscape elements in landscape images, traditional convolutional neural networks can no longer effectively solve this problem. On this basis, a fully convolutional neural network model is designed to perform semantic segmentation of landscape elements in landscape images. Through the method of deconvolution, the pixel-level semantic segmentation is realized. Compared with the 65% accuracy rate of the convolutional neural network, the fully convolutional neural network has an accuracy rate of 90.3% for the recognition of landscape elements. The method is effective, accurate, and intelligent for the classification of landscape element design, which better improves the accuracy of classification, greatly reduces the cost of landscape element design classification, and ensures that the technical method is feasible. This paper classifies landscape behavior based on this model for full convolutional neural network landscape images and demonstrates the effectiveness of using the model. In terms of landscape image processing, the image evaluation provides a certain basis.http://dx.doi.org/10.1155/2021/9921095
collection DOAJ
language English
format Article
sources DOAJ
author Bin Hu
spellingShingle Bin Hu
Deep Learning Image Feature Recognition Algorithm for Judgment on the Rationality of Landscape Planning and Design
Complexity
author_facet Bin Hu
author_sort Bin Hu
title Deep Learning Image Feature Recognition Algorithm for Judgment on the Rationality of Landscape Planning and Design
title_short Deep Learning Image Feature Recognition Algorithm for Judgment on the Rationality of Landscape Planning and Design
title_full Deep Learning Image Feature Recognition Algorithm for Judgment on the Rationality of Landscape Planning and Design
title_fullStr Deep Learning Image Feature Recognition Algorithm for Judgment on the Rationality of Landscape Planning and Design
title_full_unstemmed Deep Learning Image Feature Recognition Algorithm for Judgment on the Rationality of Landscape Planning and Design
title_sort deep learning image feature recognition algorithm for judgment on the rationality of landscape planning and design
publisher Hindawi-Wiley
series Complexity
issn 1099-0526
publishDate 2021-01-01
description This paper uses an improved deep learning algorithm to judge the rationality of the design of landscape image feature recognition. The preprocessing of the image is proposed to enhance the data. The deficiencies in landscape feature extraction are further addressed based on the new model. Then, the two-stage training method of the model is used to solve the problems of long training time and convergence difficulties in deep learning. Innovative methods for zoning and segmentation training of landscape pattern features are proposed, which makes model training faster and generates more creative landscape patterns. Because of the impact of too many types of landscape elements in landscape images, traditional convolutional neural networks can no longer effectively solve this problem. On this basis, a fully convolutional neural network model is designed to perform semantic segmentation of landscape elements in landscape images. Through the method of deconvolution, the pixel-level semantic segmentation is realized. Compared with the 65% accuracy rate of the convolutional neural network, the fully convolutional neural network has an accuracy rate of 90.3% for the recognition of landscape elements. The method is effective, accurate, and intelligent for the classification of landscape element design, which better improves the accuracy of classification, greatly reduces the cost of landscape element design classification, and ensures that the technical method is feasible. This paper classifies landscape behavior based on this model for full convolutional neural network landscape images and demonstrates the effectiveness of using the model. In terms of landscape image processing, the image evaluation provides a certain basis.
url http://dx.doi.org/10.1155/2021/9921095
work_keys_str_mv AT binhu deeplearningimagefeaturerecognitionalgorithmforjudgmentontherationalityoflandscapeplanninganddesign
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