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
  • [1] Digital mapping of soil organic carbon density using newly developed bare soil spectral indices and deep neural network
    Liu, Qian
    He, Li
    Guo, Long
    Wang, Mengdi
    Deng, Dongping
    Lv, Pin
    Wang, Ran
    Jia, Zhongfu
    Hu, Zhongwen
    Wu, Guofeng
    Shi, Tiezhu
    CATENA, 2022, 219
  • [2] Impact of bare soil pixels identification on clay content mapping using airborne hyperspectral AVIRIS-NG data: spectral indices versus spectral unmixing
    George, Elizabeth Baby
    Gomez, Cecile
    Kumar, D. Nagesh
    Dharumarajan, Subramanian
    Lalitha, Manickam
    GEOCARTO INTERNATIONAL, 2022, 37 (27) : 15912 - 15934
  • [3] Mapping several soil types using hyperspectral datasets and advanced machine learning methods
    Vibhute, Amol D.
    Kale, Karbhari V.
    RESULTS IN OPTICS, 2023, 12
  • [4] Evaluation of Soil Conditions using Spectral Indices from Hyperspectral Datasets
    Vibhute, Amol D.
    Dhumal, Rajesh
    Nagne, Ajay
    Surase, Rupali
    Varpe, Amarsinh
    Gaikwad, Sandeep
    Kale, Karbhari, V
    Mehrotra, Suresh C.
    2017 2ND INTERNATIONAL CONFERENCE ON MAN AND MACHINE INTERFACING (MAMI), 2017,
  • [5] Developing novel spectral indices for precise estimation of soil pH and organic carbon with hyperspectral data and machine learning
    Jain, Shagun
    Sethia, Divyashikha
    Tiwari, Kailash Chandra
    ENVIRONMENTAL MONITORING AND ASSESSMENT, 2024, 196 (12)
  • [6] Improving Soil Organic Matter Mapping Using Transfer Learning and Satellite-Simulated Samples From Bare Soil Hyperspectral Imagery
    Xu, Xibo
    Chen, Yunhao
    Yang, Shuting
    IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2025, 18 : 1706 - 1717
  • [7] Mapping soil salinity using a combined spectral response index for bare soil and vegetation:: A case study in the former lake Texcoco, Mexico
    Fernandez-Buces, N.
    Siebe, C.
    Cram, S.
    Palacio, J. L.
    JOURNAL OF ARID ENVIRONMENTS, 2006, 65 (04) : 644 - 667
  • [8] Mapping soil arsenic pollution at a brownfield site using satellite hyperspectral imagery and machine learning
    Jia, Xiyue
    Hou, Deyi
    SCIENCE OF THE TOTAL ENVIRONMENT, 2023, 857
  • [9] Estimation of soil properties using Hyperspectral imaging and Machine learning
    Chlouveraki, Eirini
    Katsenios, Nikolaos
    Efthimiadou, Aspasia
    Lazarou, Erato
    Kounani, Kalliopi
    Papakonstantinou, Eleni
    Vlachakis, Dimitrios
    Kasimati, Aikaterini
    Zafeiriou, Ioannis
    Espejo-Garcia, Borja
    Fountas, Spyros
    SMART AGRICULTURAL TECHNOLOGY, 2025, 10
  • [10] Digital mapping of soil attributes using machine learning
    da Matta Campbell, Patricia Morais
    Francelino, March Rocha
    Fernandes Filho, Elpidio Inacio
    Rocha, Pablo de Azevedo
    de Azevedo, Bruno Campbell
    REVISTA CIENCIA AGRONOMICA, 2019, 50 (04): : 519 - 528