A novel deep learning model for extracting arable land from high-resolution remote sensing images in hilly areas: a case study in the Sichuan Basin of Southwest China

被引:0
|
作者
Chen, Yanxi [1 ]
Xiao, Xingzhu [1 ]
Zhang, Yongle [1 ]
Huang, Min [1 ]
Tang, Ziyi [1 ]
Li, Hao [1 ]
机构
[1] Sichuan Agr Univ, Coll Resources, Chengdu, Peoples R China
关键词
Deep learning; novel arable land extraction model; high-resolution remote sensing images; semantic segmentation; texture features; CROP CLASSIFICATION; COVER;
D O I
10.1080/10106049.2024.2400493
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Arable land is the fundamental guarantee of agricultural production, and accessing accurate arable land information is particularly crucial. A novel deep learning model named CNX-eMLP with ConvNeXt as the backbone and an enhanced Multilayer Perceptron (eMLP) as the decoder was proposed for arable land extraction. The model was employed to extract arable land using high-resolution satellite imagery in a case study at Pengxi County of Southwest China and compared its performance with six deep learning models, a machine learning-based algorithm, and SinoLC-1. The study results show the CNX-eMLP significantly achieved the highest accuracy, with MIoU and OA of 75.21 and 87.9, highlighting a trade-off between computational complexity and accuracy. The CNX-eMLP model reveals arable land is predominantly found in low-altitude areas (below 400 m), with most plots being 0-5 hectares. The study presents an efficient and feasible method for accurate high-resolution remote sensing monitoring of arable land parcels in hilly regions. The eMLP decoder effectively boosts semantic segmentation performance via its innovative bidirectional fusion architecture. This design incorporates a bottom-up path augmentation within the Feature Pyramid Network, enhancing the propagation of low-level details. Original MLP layers are replaced by high-performance eMLP-Blocks that introduce batch normalization and GELU activation, enabling smoother nonlinearity. CARAFE is used for content-aware feature reassembly instead of conventional bilinear interpolation, thereby markedly enhancing both the efficiency and accuracy of semantic segmentation tasks.The CNX-eMLP model significantly outperforms other models and SinoLC-1 in terms of precision and efficiency. The use of deep learning techniques, particularly the innovative combination of ConvNeXt as a backbone and eMLP as a decoder, leads to a noteworthy improvement in accuracy metrics for arable land extraction.By integrating spectrum-texture features, the CNX-eMLP model enhances the accuracy of arable land extraction, demonstrating the substantial potential of combining multiple features to enhance the results of semantic segmentation tasks in complex environments.
引用
收藏
页数:28
相关论文
共 50 条
  • [21] Identification of Poverty Areas by Remote Sensing and Machine Learning: A Case Study in Guizhou, Southwest China
    Yin, Jian
    Qiu, Yuanhong
    Zhang, Bin
    ISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 2021, 10 (01)
  • [22] Stripe Noise Detection of High-Resolution Remote Sensing Images Using Deep Learning Method
    Li, Binbo
    Zhou, Ying
    Xie, Donghai
    Zheng, Lijuan
    Wu, Yu
    Yue, Jiabao
    Jiang, Shaowei
    REMOTE SENSING, 2022, 14 (04)
  • [23] A Survey of Deep Learning Road Extraction Algorithms Using High-Resolution Remote Sensing Images
    Mo, Shaoyi
    Shi, Yufeng
    Yuan, Qi
    Li, Mingyue
    SENSORS, 2024, 24 (05)
  • [24] A Review of Deep Learning-Based Methods for Road Extraction from High-Resolution Remote Sensing Images
    Liu, Ruyi
    Wu, Junhong
    Lu, Wenyi
    Miao, Qiguang
    Zhang, Huan
    Liu, Xiangzeng
    Lu, Zixiang
    Li, Long
    REMOTE SENSING, 2024, 16 (12)
  • [25] Building Change Detection in High-Resolution Remote-Sensing Images Based on Deep Learning
    Han Xing
    Han Ling
    Li Liangzhi
    Li Huihui
    LASER & OPTOELECTRONICS PROGRESS, 2022, 59 (10)
  • [26] Detecting unknown dams from high-resolution remote sensing images: A deep learning and spatial analysis approach
    Jing, Min
    Cheng, Liang
    Ji, Chen
    Mao, Junya
    Li, Ning
    Duan, ZhiXing
    Li, ZeMing
    Li, ManChun
    INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2021, 104
  • [27] Land-cover classification with high-resolution remote sensing images using transferable deep models
    Tong, Xin-Yi
    Xia, Gui-Song
    Lu, Qikai
    Shen, Huanfeng
    Li, Shengyang
    You, Shucheng
    Zhang, Liangpei
    REMOTE SENSING OF ENVIRONMENT, 2020, 237
  • [28] TreeDetector: Using Deep Learning for the Localization and Reconstruction of Urban Trees from High-Resolution Remote Sensing Images
    Gong, Haoyu
    Sun, Qian
    Fang, Chenrong
    Sun, Le
    Su, Ran
    REMOTE SENSING, 2024, 16 (03)
  • [29] A prior knowledge guided deep learning method for building extraction from high-resolution remote sensing images
    Ming Hao
    Shilin Chen
    Huijing Lin
    Hua Zhang
    Nanshan Zheng
    Urban Informatics, 3 (1):
  • [30] A Coarse-to-Fine Deep Learning Based Land Use Change Detection Method for High-Resolution Remote Sensing Images
    Wang, Mingchang
    Zhang, Haiming
    Sun, Weiwei
    Li, Sheng
    Wang, Fengyan
    Yang, Guodong
    REMOTE SENSING, 2020, 12 (12)