Hyperspectral Bare Soil Index (HBSI): Mapping Soil Using an Ensemble of Spectral Indices in Machine Learning Environment

被引:2
|
作者
Salas, Eric Ariel L. [1 ]
Kumaran, Sakthi Subburayalu [1 ]
机构
[1] Cent State Univ, Agr Res Dev Program ARDP, Wilberforce, OH 45384 USA
基金
美国国家航空航天局;
关键词
bare-soil index; hyperspectral bare soil index; soil mapping; urban-agricultural complex; REFLECTANCE SPECTROSCOPY; VEGETATION; AREAS; EROSION; RED;
D O I
10.3390/land12071375
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Spectral remote-sensing indices based on visible, NIR, and SWIR wavelengths are useful in predicting spatial patterns of bare soil. However, identifying an effective combination of informative wavelengths or spectral indices for mapping bare soil in a complex urban/agricultural region is still a challenge. In this study, we developed a new bare-soil index, the Hyperspectral Bare Soil Index (HBSI), to improve the accuracy of bare-soil remote-sensing mapping. We tested the HBSI using the high-spectral-resolution AVIRIS-NG and Sentinel-2 multispectral images. We applied an ensemble modeling approach, consisting of random forest (RF) and support vector machine (SVM), to classify bare soil. We found that the HBSI outperformed other existing bare-soil indices with over 91% accuracy for Sentinel-2 and AVIRIS-NG. Furthermore, the combination of the HBSI and the normalized difference vegetation index (NDVI) showed a better performance in bare-soil classification, with >92% accuracy for Sentinel-2 and >97% accuracy for AVIRIS-NG images. Also, the RF-SVM ensemble surpassed the performance of the individual models. The novelty of HBSI is due to its development, since it utilizes the blue band in addition to the NIR and SWIR2 bands from the high-spectral-resolution data from AVIRIS-NG to improve the accuracy of bare-soil mapping.
引用
收藏
页数:12
相关论文
共 50 条
  • [31] Mapping of soil suitability for medicinal plants using machine learning methods
    Roopashree, S.
    Anitha, J.
    Challa, Suryateja
    Mahesh, T. R.
    Venkatesan, Vinoth Kumar
    Guluwadi, Suresh
    SCIENTIFIC REPORTS, 2024, 14 (01)
  • [32] Mapping of soil suitability for medicinal plants using machine learning methods
    S. Roopashree
    J. Anitha
    Suryateja Challa
    T. R. Mahesh
    Vinoth Kumar Venkatesan
    Suresh Guluwadi
    Scientific Reports, 14
  • [33] Mapping soil thickness using a mechanistic model and machine learning approaches
    Rosin, Nicolas Augusto
    de Mello, Danilo Cesar
    Bonfatti, Benito R.
    Hartemink, Alfred E.
    Ferreira, Tiago O.
    Silvero, Nelida E. Q.
    Poppiel, Raul Roberto
    Mendes, Wanderson de S.
    Veloso, Gustavo Vieira
    Francelino, Marcio Rocha
    Alves, Marcelo Rodrigo
    Falcioni, Renan
    Dematte, Jose A. M.
    CATENA, 2025, 249
  • [34] Using hyperspectral vegetation indices as a proxy to monitor soil salinity
    Zhang, Ting-Ting
    Zeng, Sheng-Lan
    Gao, Yu
    Ouyang, Zu-Tao
    Li, Bo
    Fang, Chang-Ming
    Zhao, Bin
    ECOLOGICAL INDICATORS, 2011, 11 (06) : 1552 - 1562
  • [35] Assessment of the soil fertility status in Benin (West Africa)-Digital soil mapping using machine learning
    Hounkpatin, Kpade O. L.
    Bossa, Aymar Y.
    Yira, Yacouba
    Igue, Mouinou A.
    Sinsin, Brice A.
    GEODERMA REGIONAL, 2022, 28
  • [36] DEVELOPMENT OF NEW HYPERSPECTRAL ANGLE INDEX FOR ESTIMATION OF SOIL MOISTURE USING IN SITU SPECTRAL MEASURMENTS
    Mobasheri, Mohammad Reza
    Bidkhani, Nabi Gholami
    SMPR CONFERENCE 2013, 2013, 40-1-W3 : 481 - 486
  • [37] Modelling and mapping of soil erosion susceptibility using machine learning in a tropical hot sub-humid environment
    Bag, Rakhohori
    Mondal, Ismail
    Dehbozorgi, Mahroo
    Bank, Subhra Pratim
    Das, Dipendra Nath
    Bandyopadhyay, Jatisankar
    Pham, Quoc Bao
    Al-Quraishi, Ayad M. Fadhil
    Nguyen, Xuan Cuong
    JOURNAL OF CLEANER PRODUCTION, 2022, 364
  • [38] Mapping Soil Organic Matter Content during the Bare Soil Period by Using Satellite Data and an Improved Deep Learning Network
    Xu, Xibo
    Zhai, Xiaoyan
    SUSTAINABILITY, 2023, 15 (01)
  • [39] Combination of Hyperspectral and Machine Learning to Invert Soil Electrical Conductivity
    Jia, Pingping
    Zhang, Junhua
    He, Wei
    Hu, Yi
    Zeng, Rong
    Zamanian, Kazem
    Jia, Keli
    Zhao, Xiaoning
    REMOTE SENSING, 2022, 14 (11)
  • [40] Soil salinity prediction using a machine learning approach through hyperspectral satellite image
    Klibi, Salim
    Tounsi, Kais
    Ben Rebah, Zouhaier
    Solaiman, Basel
    Farah, Imed Riadh
    2020 5TH INTERNATIONAL CONFERENCE ON ADVANCED TECHNOLOGIES FOR SIGNAL AND IMAGE PROCESSING (ATSIP'2020), 2020,