Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Cropland Extraction in Southern China from Very High-Resolution Images Based on Deep Learning

View through CrossRef
Accurate cropland information is crucial for the assessment of food security and the formulation of effective agricultural policies. Extracting cropland from remote sensing imagery is challenging due to spectral diversity and mixed pixels. Recent advances in remote sensing technology have facilitated the availability of very high-resolution (VHR) remote sensing images that provide detailed ground information. However, VHR cropland extraction in southern China is difficult because of the high heterogeneity and fragmentation of cropland and the insufficient observations of VHR sensors. To address these challenges, we proposed a deep learning-based method for automated high-resolution cropland extraction. The method used an improved HRRS-U-Net model to accurately identify the extent of cropland and explicitly locate field boundaries. The HRRS-U-Net maintained high-resolution details throughout the network to generate precise cropland boundaries. Additionally, the residual learning (RL) and the channel attention mechanism (CAM) were introduced to extract deeper discriminative representations. The proposed method was evaluated over four city-wide study areas (Qingyuan, Yangjiang, Guangzhou, and Shantou) with a diverse range of agricultural systems, using GaoFen-2 (GF-2) images. The cropland extraction results for the study areas had an overall accuracy (OA) ranging from 97.00% to 98.33%, with F1 scores (F1) of 0.830–0.940 and Kappa coefficients (Kappa) of 0.814–0.929. The OA was 97.85%, F1 was 0.915, and Kappa was 0.901 over all study areas. Moreover, our proposed method demonstrated advantages compared to machine learning methods (e.g., RF) and previous semantic segmentation models, such as U-Net, U-Net++, U-Net3+, and MPSPNet. The results demonstrated the generalization ability and reliability of the proposed method for cropland extraction in southern China using VHR remote images.
Title: Cropland Extraction in Southern China from Very High-Resolution Images Based on Deep Learning
Description:
Accurate cropland information is crucial for the assessment of food security and the formulation of effective agricultural policies.
Extracting cropland from remote sensing imagery is challenging due to spectral diversity and mixed pixels.
Recent advances in remote sensing technology have facilitated the availability of very high-resolution (VHR) remote sensing images that provide detailed ground information.
However, VHR cropland extraction in southern China is difficult because of the high heterogeneity and fragmentation of cropland and the insufficient observations of VHR sensors.
To address these challenges, we proposed a deep learning-based method for automated high-resolution cropland extraction.
The method used an improved HRRS-U-Net model to accurately identify the extent of cropland and explicitly locate field boundaries.
The HRRS-U-Net maintained high-resolution details throughout the network to generate precise cropland boundaries.
Additionally, the residual learning (RL) and the channel attention mechanism (CAM) were introduced to extract deeper discriminative representations.
The proposed method was evaluated over four city-wide study areas (Qingyuan, Yangjiang, Guangzhou, and Shantou) with a diverse range of agricultural systems, using GaoFen-2 (GF-2) images.
The cropland extraction results for the study areas had an overall accuracy (OA) ranging from 97.
00% to 98.
33%, with F1 scores (F1) of 0.
830–0.
940 and Kappa coefficients (Kappa) of 0.
814–0.
929.
The OA was 97.
85%, F1 was 0.
915, and Kappa was 0.
901 over all study areas.
Moreover, our proposed method demonstrated advantages compared to machine learning methods (e.
g.
, RF) and previous semantic segmentation models, such as U-Net, U-Net++, U-Net3+, and MPSPNet.
The results demonstrated the generalization ability and reliability of the proposed method for cropland extraction in southern China using VHR remote images.

Related Results

Estimates of Maize Plant Density from UAV RGB Images Using Faster-RCNN Detection Model: Impact of the Spatial Resolution
Estimates of Maize Plant Density from UAV RGB Images Using Faster-RCNN Detection Model: Impact of the Spatial Resolution
Early-stage plant density is an essential trait that determines the fate of a genotype under given environmental conditions and management practices. The use of RGB images taken fr...
Market dynamics in household cropland redistribution in Vietnam
Market dynamics in household cropland redistribution in Vietnam
Purpose - The paper aims to explore market dynamics in rural household cropland redistribution in Vietnam through empirical tests of the two hypotheses that are fundamental for the...
Quantitative Assessment of Cropland Exposure to Agricultural Drought in the Greater Mekong Subregion
Quantitative Assessment of Cropland Exposure to Agricultural Drought in the Greater Mekong Subregion
Accurate and reliable information on the spatiotemporal characteristics of agricultural drought is important in understanding complicated drought processes and their potential impa...
Extent of Cropland and Related Soil Erosion Risk in Rwanda
Extent of Cropland and Related Soil Erosion Risk in Rwanda
Land conversion to cropland is one of the major causes of severe soil erosion in Africa. This study assesses the current cropland extent and the related soil erosion risk in Rwanda...
Land Degradation Assessment in Pakistan based on LU and VCF
Land Degradation Assessment in Pakistan based on LU and VCF
Abstract Land degradation is a global environmental issue receiving much attention currently. According to the definition and interpretation of land degradation by relevant...
Cropland Displacement Drives Carbon Emission of Grain Transport in China
Cropland Displacement Drives Carbon Emission of Grain Transport in China
Abstract Cropland displacement is a worldwide land-use phenomenon that involves replacing cropland occupied by urbanization with newly developed cropland in remote areas. L...

Back to Top