Unsupervised active-transfer learning for automated landslide mapping

被引:4
|
作者
Wang, Zhihao [1 ]
Brenning, Alexander [1 ]
机构
[1] Friedrich Schiller Univ Jena, Dept Geog, Loebdergraben 32, D-07743 Jena, Germany
关键词
Active learning; Transfer learning; GeoAI; Landslide mapping; SUSCEPTIBILITY; KNOWLEDGE; TERRAIN;
D O I
10.1016/j.cageo.2023.105457
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Detailed landslide inventories are required for multiple purposes including disaster damage assessments, susceptibility mapping for spatial planning, and disaster risk reduction. Active learning is an artificial intelligence strategy that can achieve good performances in landslide mapping by training a machine-learning model with a reduced number of landslide/non-landslide observations, which can save time and effort in labeling training instances. Nevertheless, active-learning models are unstable at the beginning of sample selection due to the limited initial knowledge of landslide distribution. Transfer learning can help make the learner robust by transferring a landslide model trained on an existing landslide inventory from a different, but geographically similar source area, to the unseen target area. In order to adjust a transferred machine-learning model to the possibly unique environmental characteristics of the unseen area, we proposed a new framework called Unsupervised Active-Transfer Learning (UATL). This framework used a weight function to combine the landslide model transferred from the source area, with a model trained on a small, but increasing number of landslide/nonlandslide observations from the target area to efficiently build a more robust learner. We examined two methods, adaptive UATL and regular UATL, which differed in the way they assign weights to the combined learners. We evaluated our proposed new methods by comparing them with three benchmark methods (active learning only, model transfer only, and the model trained in the unseen area itself) by means of the partial area under the receiver operating characteristic (ROC) curve (AUROC) as the evaluation criterion. The results showed that the new methods, and especially adaptive UATL, can achieve good predictive performances. With only about 235 training instances from the target area, the partial AUROC obtained from adaptive UATL was only 2% lower than that obtained from the model trained in the target area itself, and consistently outperformed the other two benchmarks. Overall, we suggest that the framework proposed can be applied to the natural hazards management workflow for assisting in emergency response, especially in data-scarce regions (e.g., mountainous areas and developing countries).
引用
收藏
页数:10
相关论文
共 50 条
  • [31] Active Learning Based on Transfer Learning Techniques for Text Classification
    Onita, Daniela
    IEEE ACCESS, 2023, 11 : 28751 - 28761
  • [32] Query by diverse committee in transfer active learning
    Shao, Hao
    FRONTIERS OF COMPUTER SCIENCE, 2019, 13 (02) : 280 - 291
  • [33] Query by diverse committee in transfer active learning
    Hao Shao
    Frontiers of Computer Science, 2019, 13 : 280 - 291
  • [34] Deep Active Transfer Learning for Image Recognition
    Singh, Ankita
    Chakraborty, Shayok
    2020 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2020,
  • [35] Supervised training using an unsupervised approach to active learning
    Engelbrecht, AP
    Brits, R
    NEURAL PROCESSING LETTERS, 2002, 15 (03) : 247 - 260
  • [36] Supervised Training Using an Unsupervised Approach to Active Learning
    A. P. Engelbrecht
    R. Brits
    Neural Processing Letters, 2002, 15 : 247 - 260
  • [37] Ear Recognition Based on Deep Unsupervised Active Learning
    Khaldi, Yacine
    Benzaoui, Amir
    Ouahabi, Abdeldjalil
    Jacques, Sebastien
    Taleb-Ahmed, Abdelmalik
    IEEE SENSORS JOURNAL, 2021, 21 (18) : 20704 - 20713
  • [38] Open set transfer learning through distribution driven active learning
    Wang, Min
    Wen, Ting
    Jiang, Xiao-Yu
    Zhang, An-An
    PATTERN RECOGNITION, 2024, 146
  • [39] Active Learning for Visual Image Classification Method Based on Transfer Learning
    Yang, Jihai
    Li, Shijun
    Xu, Wenning
    IEEE ACCESS, 2018, 6 : 187 - 198
  • [40] Transfer Learning in Landslide Susceptibility Mapping: Bridging Data-Rich and Data-Scarce Regions in the Northwestern Himalayas
    Singh, Ankit
    Dhiman, Nitesh
    Shukla, Dericks Praise
    IGARSS 2024-2024 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, IGARSS 2024, 2024, : 3253 - 3256