Litcius/Paper detail

Land Use and Land Cover Mapping in China Using Multimodal Fine-Grained Dual Network

Shang Liu, Huadong Wang, Yuan Hu, Mengting Zhang, Yixuan Zhu, Zhibin Wang, Dongyang Li, Mingyang Yang, Fan Wang

2023IEEE Transactions on Geoscience and Remote Sensing26 citationsDOI

Abstract

With the advancement of geo-systems and the increased availability of satellite data, a plethora of Land-Use and Land-Cover (LULC) products have been developed. The existing LULC products primarily relied on time-series imagery to classify land by pixel-based classifiers, allowing for local analysis and accurate boundary detection. However, the advent of deep learning has shifted towards the use of patch-based CNN models for generating land cover maps. In this paper, (1) we create a training dataset for China using a voting strategy based on three off-the-shelf available LULC products, avoiding the labor-intensive manual annotation. (2) We design a novel CNN-based model for LULC task, called Multi-modal Fine-grained Dual Network (dubbed as Dual-Net), which takes dual-date images to generate final maps, and reduces the need for gap-free temporal sequences or separate cloud detection. To leverage the correlation between location, date, and category, we embed multi-modal information (dates and geo-locations) to the model. Further, by incorporating low-level constraints and using pseudo-label refinement, we continually improve the performance and achieve more refined segmentation. (3) Due to the lack of a suitable validation dataset for China, we create a new validation dataset called China Sentinel2 Validation Dataset (CSVD) by manually annotating 733 finely labeled images of 1024 × 1024 pixels of China-specific Sentinel2 data. (4) Extensive experiments demonstrate that our model outperforms existing LULC products and produces more fine-grained segmentation results comparable to other patch-based products. Finally, we release annual LULC maps for China in 2020-2022 and also make our model accessible online for real-time results export.

Topics & Concepts

Computer scienceLand coverSegmentationArtificial intelligenceLeverage (statistics)PixelDeep learningRemote sensingLand useData miningCivil engineeringGeologyEngineeringRemote-Sensing Image ClassificationRemote Sensing in AgricultureRemote Sensing and Land Use