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Erschienen in: Evolutionary Intelligence 4/2022

19.01.2021 | Special Issue

Simulation of urban pattern evolution trend based on satellite GIS and remote sensing

verfasst von: Limei Zhang, Yarong Zheng, Bin Yang, Guohua Zhang, Tiemei Liu, Sheng Liu

Erschienen in: Evolutionary Intelligence | Ausgabe 4/2022

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Abstract

Existing hyperspectral remote sensing image classification methods have separate feature extraction and classifiers. At the same time, separate training will increase network complexity and be very time-consuming. Therefore, a deep learning space-spectrum combined with hyperspectral remote sensing image classification algorithm is proposed. First, mathematical transformation is used to stabilize the growth rate of remote sensing image radiation value, and reduce the standard deviation of spatial distribution characteristics of GIS information DN value, so as to increase the growth rate of remote sensing spectral radiation value in suburban areas. Then, a band combination strategy LSTM algorithm that focuses on global features is selected to regroup the bands of the spectral vector of each pixel of the hyperspectral data, which can effectively extract the context features between adjacent spectra. Finally, principal component analysis is performed on the satellite remote sensing image, and retain the first few principal components to achieve dimensionality reduction; the multiscale convolutional neural network is applied to extract the spatial features of the satellite remote sensing image after dimensionality reduction. The end-to-end structure is used to extract spectral features and spatial features simultaneously to realize satellite remote sensing image analysis. The simulation experiment proves that the calculation accuracy of the urban pattern change trend of the algorithm in this paper is high, and the calculation results are more convergent, which can provide more accurate trends of the urban pattern change and play a guiding role in the future construction of the city.

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Literatur
1.
Zurück zum Zitat Chang Y, Luo B (2019) Bidirectional convolutional LSTM neural network for remote sensing image super-resolution. Remote Sens 11(20):2333–2345CrossRef Chang Y, Luo B (2019) Bidirectional convolutional LSTM neural network for remote sensing image super-resolution. Remote Sens 11(20):2333–2345CrossRef
2.
Zurück zum Zitat Shao Z, Pan Y, Diao C et al (2019) Cloud detection in remote sensing images based on multiscale features-convolutional neural network. IEEE Trans Geosci Remote Sens 57(6):4062–4076CrossRef Shao Z, Pan Y, Diao C et al (2019) Cloud detection in remote sensing images based on multiscale features-convolutional neural network. IEEE Trans Geosci Remote Sens 57(6):4062–4076CrossRef
3.
Zurück zum Zitat Sarivougioukas J, Vagelatos A (2020) Modeling deep learning neural networks with denotational mathematics in UbiHealth environment. Int J Softw Sci Comput Intell (IJSSCI) 12(3):14–27CrossRef Sarivougioukas J, Vagelatos A (2020) Modeling deep learning neural networks with denotational mathematics in UbiHealth environment. Int J Softw Sci Comput Intell (IJSSCI) 12(3):14–27CrossRef
4.
Zurück zum Zitat Plageras AP, Psannis KE, Stergiou C et al (2018) Efficient IoT-based sensor BIG Data collection–processing and analysis in smart buildings. Fut Gen Comput Syst 82:349–357CrossRef Plageras AP, Psannis KE, Stergiou C et al (2018) Efficient IoT-based sensor BIG Data collection–processing and analysis in smart buildings. Fut Gen Comput Syst 82:349–357CrossRef
5.
Zurück zum Zitat Vahdat-Nejad H, Eilaki SO, Izadpanah S (2018) Towards a better understanding of ubiquitous cloud computing. Int J Cloud Appl Comput (IJCAC) 8(1):1–20 Vahdat-Nejad H, Eilaki SO, Izadpanah S (2018) Towards a better understanding of ubiquitous cloud computing. Int J Cloud Appl Comput (IJCAC) 8(1):1–20
6.
Zurück zum Zitat Ko H, Mesicek L, Choi J et al (2018) A study on secure contents strategies for applications with drm on cloud computing. Int J Cloud Appl Comput (IJCAC) 8(1):143–153 Ko H, Mesicek L, Choi J et al (2018) A study on secure contents strategies for applications with drm on cloud computing. Int J Cloud Appl Comput (IJCAC) 8(1):143–153
7.
Zurück zum Zitat Cao N, Liu P, Li G et al (2018) Evaluation models for the nearest closer routing protocol in wireless sensor networks. IEEE Access 6:77043–77054CrossRef Cao N, Liu P, Li G et al (2018) Evaluation models for the nearest closer routing protocol in wireless sensor networks. IEEE Access 6:77043–77054CrossRef
8.
Zurück zum Zitat Sun G, Huang H, Zhang A et al (2019) Fusion of multiscale convolutional neural networks for building extraction in very high-resolution images. Remote Sens 11(3):227CrossRef Sun G, Huang H, Zhang A et al (2019) Fusion of multiscale convolutional neural networks for building extraction in very high-resolution images. Remote Sens 11(3):227CrossRef
9.
Zurück zum Zitat Theran CA, Álvarez MA, Arzuaga E, et al (2019) A pixel level scaled fusion model to provide high spatial-spectral resolution for satellite images using LSTM networks. In: 2019 10th workshop on hyperspectral imaging and signal processing: evolution in remote sensing (WHISPERS). IEEE, 2019: 1–5 Theran CA, Álvarez MA, Arzuaga E, et al (2019) A pixel level scaled fusion model to provide high spatial-spectral resolution for satellite images using LSTM networks. In: 2019 10th workshop on hyperspectral imaging and signal processing: evolution in remote sensing (WHISPERS). IEEE, 2019: 1–5
10.
Zurück zum Zitat Sanne H-B (2017) Urban land readjustment: Necessary for effective urban renewal? Analysing the Dutch quest for new legislation. Land Use Policy Sanne H-B (2017) Urban land readjustment: Necessary for effective urban renewal? Analysing the Dutch quest for new legislation. Land Use Policy
11.
Zurück zum Zitat Wang M, Krstikj A, Koura H (2017). Effects of urban planning on urban expansion control in Yinchuan City, Western China. Habitat Int Wang M, Krstikj A, Koura H (2017). Effects of urban planning on urban expansion control in Yinchuan City, Western China. Habitat Int
12.
Zurück zum Zitat Sedik A, Iliyasu AM, El-Rahiem BA (2020) Deploying machine and deep learning models for efficient data-augmented detection of COVID-19 infections. 12(7) Sedik A, Iliyasu AM, El-Rahiem BA (2020) Deploying machine and deep learning models for efficient data-augmented detection of COVID-19 infections. 12(7)
13.
Zurück zum Zitat Goodarzi MS, Sakieh Y, Navardi S (2017) Scenario-based urban growth allocation in a rapidly developing area: a modeling approach for sustainability analysis of an urban-coastal coupled system. Environ Dev Sustain 3 Goodarzi MS, Sakieh Y, Navardi S (2017) Scenario-based urban growth allocation in a rapidly developing area: a modeling approach for sustainability analysis of an urban-coastal coupled system. Environ Dev Sustain 3
14.
Zurück zum Zitat Zank B, Bagstad KJ, Voigt B, Villa F (2016) Modeling the effects of urban expansion on natural capital stocks and ecosystem service flows: a case study in the Puget Sound, Washington, USA. Landscape and Urban Plann Zank B, Bagstad KJ, Voigt B, Villa F (2016) Modeling the effects of urban expansion on natural capital stocks and ecosystem service flows: a case study in the Puget Sound, Washington, USA. Landscape and Urban Plann
15.
Zurück zum Zitat Zeng C, Deng X, Xu S, Wang Y, Cui J (2016) An integrated approach for assessing the urban ecosystem health of megacities in China. Cities Zeng C, Deng X, Xu S, Wang Y, Cui J (2016) An integrated approach for assessing the urban ecosystem health of megacities in China. Cities
16.
Zurück zum Zitat Middel A, Lukasczyk J, Zakrzewski S, Arnold M, Maciejewski R (2019) Urban form and composition of street canyons: a human-centric big data and deep learning approach. Landscape and Urban Planning Middel A, Lukasczyk J, Zakrzewski S, Arnold M, Maciejewski R (2019) Urban form and composition of street canyons: a human-centric big data and deep learning approach. Landscape and Urban Planning
17.
Zurück zum Zitat Abrahams A, Oram C, Lozano-Gracia N (2018) Deblurring DMSP nighttime lights: a new method using Gaussian filters and frequencies of illumination. Remote Sens Environ Abrahams A, Oram C, Lozano-Gracia N (2018) Deblurring DMSP nighttime lights: a new method using Gaussian filters and frequencies of illumination. Remote Sens Environ
18.
Zurück zum Zitat Liu Y, Liu X, Gao S, Gong L, Kang C, Zhi Y, Chi G, Shi L (2015) Social sensing: a new approach to understanding our socioeconomic environments. Ann Assoc Am Geogr 3 Liu Y, Liu X, Gao S, Gong L, Kang C, Zhi Y, Chi G, Shi L (2015) Social sensing: a new approach to understanding our socioeconomic environments. Ann Assoc Am Geogr 3
19.
Zurück zum Zitat Cao C (2018) Research on the auditing of outgoing land resources of leading cadres. Financ Supervis. 17 Cao C (2018) Research on the auditing of outgoing land resources of leading cadres. Financ Supervis. 17
20.
Zurück zum Zitat Shang S (2018) Discussion on the issue of outsourcing audit of natural resources assets under the background of big data——taking the outsourcing audit of marine natural resources assets as an example. Financ Account Newsl 22 Shang S (2018) Discussion on the issue of outsourcing audit of natural resources assets under the background of big data——taking the outsourcing audit of marine natural resources assets as an example. Financ Account Newsl 22
21.
Zurück zum Zitat Huang J (2018) Exploration and analysis of the departure audit of leading cadres' marine resources assets. Bus Account. 13 Huang J (2018) Exploration and analysis of the departure audit of leading cadres' marine resources assets. Bus Account. 13
22.
Zurück zum Zitat Zou H (2018) Application research of 3S technology in natural resources asset outgoing auditing. Mod Audit Econ 03 Zou H (2018) Application research of 3S technology in natural resources asset outgoing auditing. Mod Audit Econ 03
23.
Zurück zum Zitat Li S, Xie H, Lu L (2018) Construction and application of natural resources asset audit evaluation index system——based on fuzzy AHP. Friends Account. 10 Li S, Xie H, Lu L (2018) Construction and application of natural resources asset audit evaluation index system——based on fuzzy AHP. Friends Account. 10
24.
Zurück zum Zitat Geng J, Li Z, Lu X (2018) The status quo and future discussion of my country’s water resources audit. Audit Res 01 Geng J, Li Z, Lu X (2018) The status quo and future discussion of my country’s water resources audit. Audit Res 01
25.
Zurück zum Zitat Wang N, Li Q, El-Latif AAA et al (2013) Two-directional two-dimensional modified. Fish Principal Comp Anal 22(2):023013–023013 Wang N, Li Q, El-Latif AAA et al (2013) Two-directional two-dimensional modified. Fish Principal Comp Anal 22(2):023013–023013
26.
Zurück zum Zitat Yang H (2019) The application of 3S technology in the auditing of leading cadres’ mineral resource assets. Audit Financ Manag 11 Yang H (2019) The application of 3S technology in the auditing of leading cadres’ mineral resource assets. Audit Financ Manag 11
27.
Zurück zum Zitat Wang M (2019) Research on the application of GIS in the field of hydrology and water resources. Jilin Agriculture. 21 Wang M (2019) Research on the application of GIS in the field of hydrology and water resources. Jilin Agriculture. 21
28.
Zurück zum Zitat Hou Z (2019) Data analysis system of mine surveying and mapping achievements based on Arc GIS. World Nonferrous Metals. 15 Hou Z (2019) Data analysis system of mine surveying and mapping achievements based on Arc GIS. World Nonferrous Metals. 15
29.
Zurück zum Zitat Rao L (2019) Research on the application of GIS in the quantification of soil erosion. Decis Explorat (middle). 09 Rao L (2019) Research on the application of GIS in the quantification of soil erosion. Decis Explorat (middle). 09
Metadaten
Titel
Simulation of urban pattern evolution trend based on satellite GIS and remote sensing
verfasst von
Limei Zhang
Yarong Zheng
Bin Yang
Guohua Zhang
Tiemei Liu
Sheng Liu
Publikationsdatum
19.01.2021
Verlag
Springer Berlin Heidelberg
Erschienen in
Evolutionary Intelligence / Ausgabe 4/2022
Print ISSN: 1864-5909
Elektronische ISSN: 1864-5917
DOI
https://doi.org/10.1007/s12065-020-00537-y

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