SSL-SoilNet: A Hybrid Transformer-Based Framework With Self-Supervised Learning for Large-Scale Soil Organic Carbon Prediction

被引:0
|
作者
Kakhani, Nafiseh [1 ,2 ]
Rangzan, Moien [3 ]
Jamali, Ali [4 ]
Attarchi, Sara [3 ]
Alavipanah, Seyed Kazem [3 ]
Mommert, Michael [5 ]
Tziolas, Nikolaos [6 ]
Scholten, Thomas [1 ,2 ]
机构
[1] Univ Tubingen, Dept Geosci Soil Sci & Geomorphol, CRC RessourceCultures 1070, Tubingen, Germany
[2] Univ Tubingen, DFG Cluster Excellence Machine Learning, Tubingen, Germany
[3] Univ Tehran, Fac Geog, Dept Remote Sensing & GIS, Tehran 141556619, Iran
[4] Simon Fraser Univ, Dept Geog, Burnaby, BC V5A 1S6, Canada
[5] Stuttgart Univ Appl Sci, Fac Geomat Comp Sci & Math, D-70174 Stuttgart, Germany
[6] Univ Florida, Inst Food & Agr Sci, Southwest Florida Res & Educ Ctr, Dept Soil Water & Ecosyst Sci, Gainesville, FL 34142 USA
关键词
Data models; Meteorology; Transformers; Contrastive learning; Carbon; Remote sensing; Training; deep learning (DL); digital soil mapping (DSM); Europe; LUCAS; self-supervised model; soil organic carbon (SOC); spatiotemporal model; CLIMATE SURFACES; FOREST SOILS; STOCKS; INDICATORS; GRADIENT;
D O I
10.1109/TGRS.2024.3446042
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Soil organic carbon (SOC) constitutes a fundamental component of terrestrial ecosystem functionality, playing a pivotal role in nutrient cycling, hydrological balance, and erosion mitigation. Precise mapping of SOC distribution is imperative for the quantification of ecosystem services, notably carbon sequestration and soil fertility enhancement. Digital soil mapping (DSM) leverages statistical models and advanced technologies, including machine learning (ML), to accurately map soil properties, such as SOC, utilizing diverse data sources like satellite imagery, topography, remote sensing indices, and climate series. Within the domain of ML, self-supervised learning (SSL), which exploits unlabeled data, has gained prominence in recent years. This study introduces a novel approach that aims to learn the geographical link between multimodal features via self-supervised contrastive learning, employing pretrained Vision Transformers (ViT) for image inputs and Transformers for climate data, before fine-tuning the model with ground reference samples. The proposed approach has undergone rigorous testing on two distinct large-scale datasets, with results indicating its superiority over traditional supervised learning models, which depends solely on labeled data. Furthermore, through the utilization of various evaluation metrics (e.g., root-mean-square error (RMSE), mean absolute error (MAE), concordance correlation coefficient (CCC), etc.), the proposed model exhibits higher accuracy when compared to other conventional ML algorithms like random forest and gradient boosting. This model is a robust tool for predicting SOC and contributes to the advancement of DSM techniques, thereby facilitating land management and decision-making processes based on accurate information.
引用
收藏
页数:15
相关论文
共 50 条
  • [21] Transformer-based Self-supervised Representation Learning for Emotion Recognition Using Bio-signal Feature Fusion
    Sawant, Shrutika S.
    Erick, F. X.
    Arora, Pulkit
    Pahl, Jaspar
    Foltyn, Andreas
    Holzer, Nina
    Gotz, Theresa
    2023 11TH INTERNATIONAL CONFERENCE ON AFFECTIVE COMPUTING AND INTELLIGENT INTERACTION WORKSHOPS AND DEMOS, ACIIW, 2023,
  • [22] SSL4EO-S12: A large-scale multimodal, multitemporal dataset for self-supervised learning in Earth observation [Software and Data Sets]
    Wang, Yi
    Braham, Nassim Ait Ali
    Xiong, Zhitong
    Liu, Chenying
    Albrecht, Conrad M.
    Zhu, Xiao Xiang
    IEEE GEOSCIENCE AND REMOTE SENSING MAGAZINE, 2023, 11 (03) : 98 - 106
  • [23] Transformer-based biomarker prediction from colorectal cancer histology: A large-scale multicentric study
    Wagner, Sophia J.
    Reisenbuechler, Daniel
    West, Nicholas P.
    Niehues, Jan Moritz
    Zhu, Jiefu
    Foersch, Sebastian
    Veldhuizen, Gregory Patrick
    Quirke, Philip
    Grabsch, Heike I.
    van den Brandt, Piet A.
    Hutchins, Gordon G. A.
    Richman, Susan D.
    Yuan, Tanwei
    Langer, Rupert
    Jenniskens, Josien C. A.
    Offermans, Kelly
    Mueller, Wolfram
    Gray, Richard
    Gruber, Stephen B.
    Greenson, Joel K.
    Rennert, Gad
    Bonner, Joseph D.
    Schmolze, Daniel
    Jonnagaddala, Jitendra
    Hawkins, Nicholas J.
    Ward, Robyn L.
    Morton, Dion
    Seymour, Matthew
    Magill, Laura
    Nowak, Marta
    Hay, Jennifer
    Koelzer, Viktor H.
    Church, David N.
    Matek, Christian
    Geppert, Carol
    Peng, Chaolong
    Zhi, Cheng
    Ouyang, Xiaoming
    James, Jacqueline A.
    Loughrey, Maurice B.
    Salto-Tellez, Manuel
    Brenner, Hermann
    Hoffmeister, Michael
    Truhn, Daniel
    Schnabel, Julia A.
    Boxberg, Melanie
    Peng, Tingying
    Kather, Jakob Nikolas
    CANCER CELL, 2023, 41 (09) : 1650 - +
  • [24] A Transformer-based self-supervised learning model for fault diagnosis of air-conditioning systems with limited labeled data
    Hua, Mei
    Yan, Ke
    Li, Xin
    Engineering Applications of Artificial Intelligence, 2025, 146
  • [25] Novel transformer-based self-supervised learning methods for improved HVAC fault diagnosis performance with limited labeled data
    Fan, Cheng
    Lei, Yutian
    Sun, Yongjun
    Mo, Like
    ENERGY, 2023, 278
  • [26] Prediction of Protein Tertiary Structure Using Pre-Trained Self-Supervised Learning Based on Transformer
    Kurniawan, Alif
    Jatmiko, Wisnu
    Hertadi, Rukman
    Habibie, Novian
    2020 5TH INTERNATIONAL WORKSHOP ON BIG DATA AND INFORMATION SECURITY (IWBIS 2020), 2020, : 75 - 80
  • [27] Self-supervised learning based transformer and convolution hybrid network for one-shot organ segmentation
    Wang, Bo
    Li, Qian
    You, Zheng
    NEUROCOMPUTING, 2023, 527 : 1 - 12
  • [28] SSL2: Self-Supervised Learning meets Semi-Supervised Learning: Multiple Sclerosis Segmentation in 7T-MRI from large-scale 3T-MRI
    Wang, Jiacheng
    Li, Hao
    Liu, Han
    Hu, Dewei
    Lu, Daiwei
    Yoon, Keejin
    Barter, Kelsey
    Bagnato, Francesca
    Oguz, Ipek
    MEDICAL IMAGING 2023, 2023, 12464
  • [29] Large-scale chemical process causal discovery from big data with transformer-based deep learning
    Bi, Xiaotian
    Wu, Deyang
    Xie, Daoxiong
    Ye, Huawei
    Zhao, Jinsong
    PROCESS SAFETY AND ENVIRONMENTAL PROTECTION, 2023, 173 : 163 - 177
  • [30] Resolution Effect of Soil Organic Carbon Prediction in a Large-Scale and Morphologically Complex Area
    Wu, T.
    Chen, J. Y.
    Li, Y. F.
    Yao, Y.
    Li, Z. Q.
    Xing, S. H.
    Zhang, L. M.
    EURASIAN SOIL SCIENCE, 2023, 56 (SUPPL 2) : S260 - S275