Rockfall Source Identification Using a Hybrid Gaussian Mixture-Ensemble Machine Learning Model and LiDAR Data |
Fanos, Ali Mutar
(Department of Civil Engineering, Universiti Putra Malaysia)
Pradhan, Biswajeet (Faculty of Engineering and Information Technology, University of Technology Sydney) Mansor, Shattri (Department of Civil Engineering, Universiti Putra Malaysia) Yusoff, Zainuddin Md (Department of Civil Engineering, Universiti Putra Malaysia) Abdullah, Ahmad Fikri bin (Department of Biological and Agricultural Engineering, Universiti Putra Malaysia) Jung, Hyung-Sup (Department of Geoinformatics, University of Seoul) |
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