Downstream lingering attention transformer network (DsLATNet) for land use land cover classification: A bicolor deep learning framework

被引:0
|
作者
Anitha, V. [1 ]
Manimegalai, D. [2 ]
Kalaiselvi, S. [2 ]
机构
[1] Natl Engn Coll, Dept IT, Kovilpatti 628503, India
[2] Natl Engn Coll, Dept CSE, Kovilpatti 628503, India
关键词
Land use land cover (LULC) classification; Deep learning; Transformer; Attention; Bi color space; U-NET; FEATURES;
D O I
10.1016/j.asoc.2024.112074
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Land Use and Land Cover (LULC) classification is the process of locating and classifying regions of the Earth's surface (land cover) based on their physical attributes and human utilization (land use purpose). It is essential for mapping and monitoring changes in ecosystems, facilitating effective resource management and informed decision-making in land-use planning. Convolutional Neural Network (CNN's) is incapable of capturing longrange dependencies. The effectiveness of transformers relies on extensive training datasets, yet many satellite datasets have comparatively limited sample sizes. Moreover, due to the numerous factors influencing visual prominence, it is challenging to obtain abundant features from a single-color space. To overcome these limitations, we introduce an innovative bicolor architecture Downstream Lingering Attention Transformer Network (DsLATNet). DsLATNet characterizes remote sensing images on two color spaces viz RGB and HSV by processing the information using Residual Network - 50(ResNet-50) backbone network.Extracted features of backbone network are further refined to acquire detailed aware features through Downstream Lingering Feature Pyramid Network (DsLFPN).This is further integrated with a DuoTransformer that utilizes attention mechanisms to obtain long-range dependencies. Eventually, the features are aggregated using residual connections that are dilated indepth multiple times to produce class labels. The efficacy of the algorithm is evaluated through standard classification accuracy metrics. Experimental results on both the Wuhan Dense Labeling Dataset (WHDLD) and the Gaofen Image Dataset (GID) exhibit that the suggested technique exceeds cutting-edge classification methods. WHDLD achieved an Overall Accuracy (OA) of 86.34 %, Average Accuracy (AA) of 75.62 %, and Kappa coefficient (K) of 80.75, while the GID exhibited superior performance with an OA of 86.43%, AA of 88.13%, and K of 81.25.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] A deep learning framework for land-use/land-cover mapping and analysis using multispectral satellite imagery
    Victor Alhassan
    Christopher Henry
    Sheela Ramanna
    Christopher Storie
    Neural Computing and Applications, 2020, 32 : 8529 - 8544
  • [32] Classification of land use and land cover through machine learning algorithms: a literature review
    Tobar-Diaz, Rene
    Gao, Yan
    Mas, Jean Francois
    Cambron-Sandoval, Victor Hugo
    REVISTA DE TELEDETECCION, 2023, (62): : 1 - 19
  • [33] A deep learning framework for land-use/land-cover mapping and analysis using multispectral satellite imagery
    Alhassan, Victor
    Henry, Christopher
    Ramanna, Sheela
    Storie, Christopher
    NEURAL COMPUTING & APPLICATIONS, 2020, 32 (12) : 8529 - 8544
  • [34] Multisource Data Fusion Framework for Land Use/Land Cover Classification Using Machine Vision
    Qadri, Salman
    Khan, Dost Muhammad
    Qadri, Syed Furqan
    Razzaq, Abdul
    Ahmad, Nazir
    Jamil, Mutiullah
    Shah, Ali Nawaz
    Muhammad, Syed Shah
    Saleem, Khalid
    Awan, Sarfraz Ahmad
    JOURNAL OF SENSORS, 2017, 2017
  • [35] A hybrid deep convolutional neural network for accurate land cover classification
    Wambugu, Naftaly
    Chen, Yiping
    Xiao, Zhenlong
    Wei, Mingqiang
    Bello, Saifullahi Aminu
    Marcato Junior, Jose
    Li, Jonathan
    INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2021, 103
  • [36] Multiclass Land Use and Land Cover Classification of Andean Sub-Basins in Colombia with Sentinel-2 and Deep Learning
    Arrechea-Castillo, Darwin Alexis
    Solano-Correa, Yady Tatiana
    Munoz-Ordonez, Julian Fernando
    Pencue-Fierro, Edgar Leonairo
    Figueroa-Casas, Apolinar
    REMOTE SENSING, 2023, 15 (10)
  • [37] Land use and land cover classification for change detection studies using convolutional neural network
    Pushpalatha, V.
    Mallikarjuna, P. B.
    Mahendra, H. N.
    Subramoniam, S. Rama
    Mallikarjunaswamy, S.
    APPLIED COMPUTING AND GEOSCIENCES, 2025, 25
  • [38] Assessing Land Cover Classification Accuracy: Variations in Dataset Combinations and Deep Learning Models
    Sim, Woo-Dam
    Yim, Jong-Su
    Lee, Jung-Soo
    REMOTE SENSING, 2024, 16 (14)
  • [39] Accuracy Assessment of Land-Use Land-Cover Classification Using Semantic Segmentation-Based Deep Learning Model and RapidEye Imagery
    Sim, Woodam
    Yim, Jong Su
    Lee, Jung-Soo
    KOREAN JOURNAL OF REMOTE SENSING, 2023, 39 (03) : 269 - 282
  • [40] Sen-2 LULC: Land use land cover dataset for deep learning approaches
    Sawant, Suraj
    Garg, Rahul Dev
    Meshram, Vishal
    Mistry, Shrayank
    DATA IN BRIEF, 2023, 51