Improving Built-up Extraction Using Spectral Indices and Machine Learning on Sentinel-2 Satellite Data in Mumbai Suburban District, India

被引:0
|
作者
Saini, Rashmi [1 ]
Rawat, Shivam [1 ]
Semwal, Prabhakar [2 ]
Singh, Suraj [1 ]
Chaudhary, Surendra Singh [3 ]
Jaware, Tushar Hrishikesh [4 ]
Patel, Kanubhai K. [5 ]
机构
[1] GB Pant Inst Engn & Technol, Comp Sci & Engn, Pauri Garhwal 246194, India
[2] THDC Inst Hydropower Engn & Technol, Comp Sci & Engn, Tehri 246444, India
[3] Govt Engn Coll, Comp Sci & Engn, Bikaner 334004, India
[4] RC Patel Inst Technol, Comp Sci & Engn, Shirpur 425405, India
[5] Charotar Univ Sci & Technol CHARUSAT, Comp Applicat, Changa 382445, India
关键词
built-up; extreme gradient boosting; machine learning; Support Vector Machine; satellite image; K-nearest neighbors; Random Forest; spectral indices; LAND-COVER CLASSIFICATION; REMOTE-SENSING IMAGES; IMPERVIOUS SURFACE; ENSEMBLE; IMPACTS; PATTERN; AREAS; CITY;
D O I
10.18280/ts.410348
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Built-up mapping possesses a great challenge owing to the varying spectral signatures and spatial attributes of different features such as buildings, individual houses, roads, etc. Here, the key challenge is to separate built-up class and bare/fallow land class due to the spectral signature similarity. The objectives of this study are as follows: (i) to extract built-up features using spectral bands and twelve popular spectral indices using advanced machine learning techniques and analyzing the change in accuracy after integrating selected spectral indices in the classification, (ii) separability analysis of built-up class and bare/fallow land using the Spectral Discrimination Index (SDI) and histogram plots for selected indices. (iii) the performance of the advanced ensemble classifier, extreme gradient boosting, is compared to other well-known machine learning techniques, such as Random Forest, Support Vector Machine, and K-nearest neighbors (KNN). Two datasets were used: Dataset- 1 was formed by performing stacking operation on four bands at 10 m spatial resolution. Dataset-2 was prepared by computing twelve spectral indices and integrating them with Dataset-1. The results indicated that extreme gradient boosting method obtained highest overall accuracy and kappa value of 88.90%, 0.848 for Dataset-1, and 94.30%, 0.922 for Dataset-2, respectively. The overall accuracy for Random Forest, Support Vector Machine, and KNN is 88.23%, 87.05%, and 86.60% for Dataset-1, and 93.04%, 91.04%, and 89.93% for Dataset-2, respectively. There is a significant rise of 4.81% (Random Forest), 3.99% (Support Vector Machine), 3.33% (KNN), and 5.40% (extreme gradient boosting) in overall accuracy for the fused dataset has been observed. The outcome of this study suggest that the Enhanced Normalized Difference Impervious Surfaces Index (ENDISI) and Modified Normalized Difference Water Index (MNDWI) are very useful spectral indices for mapping of built-up with a higher degree of separability for built-up and bare/fallow land separation.
引用
收藏
页码:1609 / 1623
页数:15
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