River plume identification through a deep-learning model: an innovative approach

被引:0
|
作者
Luppichini, Marco [1 ]
Lazzarotti, Marco [1 ]
Bini, Monica [1 ,2 ,3 ]
机构
[1] Univ Pisa, Dept Earth Sci, Via Santa Maria 53, Pisa, Italy
[2] Ist Nazl Geofis & Vulcanol INGV, Rome, Italy
[3] Univ Pisa, CIRSEC Ctr Interdipartimentale Ric Studio Effetti, Pisa, Italy
关键词
River Plumes; Machine-Learning; Automatic identification; Coastal Environment; Italy; CLOUD REMOVAL; COASTAL; TURBIDITY; DELTA; ALGORITHM; NETWORKS;
D O I
10.1080/01431161.2024.2425118
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
River plumes are complex physical phenomena that occur at the interface between riverine and marine systems. The lack of direct measurements of sediment concentration complicates the study of these geomorphological features, since the boundaries of river plumes are often gradual and unclear. Therefore, the identification and digitalization of river plumes is not simple and the methods applied in different study areas are not always objective and replicable. The aim of this work is to provide a valid approach based on a deep-learning model that uses Convolution Neural Network (CNN) layers for the digitalization of river plumes. We describe the methodology applied to implement the input dataset used for training the model, the errors obtained, and an application for a study area of about 300 km located in the Mediterranean. The model uses Sentinel-2 Level-1C images. The application of the model to a specific study area allowed us to understand the possibility of investigating these geomorphological features to obtain results in agreement with previous works. As a matter of fact, by using the red band as a proxy of sediment concentration, we were able to investigate the average behaviours of sediment dispersion along the coast and to extract innovative data related to specific events for the study of morphological characteristics such as dimension and direction.
引用
收藏
页数:23
相关论文
共 50 条
  • [41] A deep-learning approach to realizing functionality in nanoelectronic devices
    Ruiz Euler, Hans-Christian
    Boon, Marcus N.
    Wildeboer, Jochem T.
    van de Ven, Bram
    Chen, Tao
    Broersma, Hajo
    Bobbert, Peter A.
    van der Wiel, Wilfred G.
    NATURE NANOTECHNOLOGY, 2020, 15 (12) : 992 - U17
  • [42] DeepZipper: A Novel Deep-learning Architecture for Lensed Supernovae Identification
    Morgan, R.
    Nord, B.
    Bechtol, K.
    Gonzalez, S. J.
    Buckley-Geer, E.
    Moller, A.
    Park, J. W.
    Kim, A. G.
    Birrer, S.
    Aguena, M.
    Annis, J.
    Bocquet, S.
    Brooks, D.
    Rosell, A. Carnero
    Kind, M. Carrasco
    Carretero, J.
    Cawthon, R.
    da Costa, L. N.
    Davis, T. M.
    De Vicente, J.
    Doel, P.
    Ferrero, I
    Friedel, D.
    Frieman, J.
    Garcia-Bellido, J.
    Gatti, M.
    Gaztanaga, E.
    Giannini, G.
    Gruen, D.
    Gruendl, R. A.
    Gutierrez, G.
    Hollowood, D. L.
    Honscheid, K.
    James, D. J.
    Kuehn, K.
    Kuropatkin, N.
    Maia, M. A. G.
    Miquel, R.
    Palmese, A.
    Paz-Chinchon, F.
    Pereira, M. E. S.
    Pieres, A.
    Malagon, A. A. Plazas
    Reil, K.
    Roodman, A.
    Sanchez, E.
    Smith, M.
    Suchyta, E.
    Swanson, M. E. C.
    Tarle, G.
    ASTROPHYSICAL JOURNAL, 2022, 927 (01):
  • [43] Automated identification and segmentation of urine spots based on deep-learning
    Fan, Xin
    Li, Jun
    Yan, Junan
    PEERJ, 2024, 12
  • [44] Deep-Learning Based Modulation Identification in Wireless Communication System
    Jaiswal, Saurabh
    Paritosh, Pushp
    Kumar, Preetam
    2021 IEEE INTERNATIONAL CONFERENCE ON ADVANCED NETWORKS AND TELECOMMUNICATIONS SYSTEMS (IEEE ANTS), 2021,
  • [45] Implementing deep-learning techniques for accurate fruit disease identification
    Sujatha, R.
    Mahalakshmi, K.
    Chatterjee, Jyotir Moy
    PLANT PATHOLOGY, 2023, 72 (09) : 1726 - 1734
  • [46] Assessing the Applicability of Deep-Learning Method for Predicting Cyanobacteria in a Regulated River
    Kim, Jungwook
    Kim, Hongtae
    Kim, Kyunghyun
    Ahn, Jung Min
    JOURNAL OF ENVIRONMENTAL ENGINEERING, 2024, 150 (05)
  • [47] Is the deep-learning technique a completely alternative for the hydrological model?: A case study on Hyeongsan River Basin, Korea
    Kwak, Jaewon
    Han, Heechan
    Kim, Soojun
    Kim, Hung Soo
    STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2022, 36 (06) : 1615 - 1629
  • [48] Automatic Pavlov ratio measurement method based on spinal landmarks identification by a deep-learning model
    Wang, Yongli
    Huang, Chi
    Zhou, Junhao
    Zhang, Xueyuan
    Ren, Fei
    Zhang, Benbo
    Wang, Xiaowen
    Cheng, Xiyue
    Cao, Kai
    Dou, Yibo
    Cao, Peng
    MEDICAL PHYSICS, 2025, 52 (03) : 1536 - 1545
  • [49] Deep-Learning performance for Digital Terrain Model generation
    Knyaz, Vladimir
    IMAGE AND SIGNAL PROCESSING FOR REMOTE SENSING XXIV, 2018, 10789
  • [50] Intelligent Mobile Application for Autism Detection and Level Identification System Using Deep-Learning Model
    Swadi, Mazin R.
    Croock, Muayad S.
    TRAITEMENT DU SIGNAL, 2024, 41 (05) : 2539 - 2548