Litcius/Paper detail

Land Cover Classification of UAV Remote Sensing Based on Transformer–CNN Hybrid Architecture

Tingyu Lu, Luhe Wan, Shaoqun Qi, Meixiang Gao

2023Sensors40 citationsDOIOpen Access PDF

Abstract

High-precision land cover maps of remote sensing images based on an intelligent extraction method are an important research field for many scholars. In recent years, deep learning represented by convolutional neural networks has been introduced into the field of land cover remote sensing mapping. In view of the problem that a convolution operation is good at extracting local features but has limitations in modeling long-distance dependence relationships, a semantic segmentation network, DE-UNet, with a dual encoder is proposed in this paper. The Swin Transformer and convolutional neural network are used to design the hybrid architecture. The Swin Transformer pays attention to multi-scale global features and learns local features through the convolutional neural network. Integrated features take into account both global and local context information. In the experiment, remote sensing images from UAVs were used to test three deep learning models including DE-UNet. DE-UNet achieved the highest classification accuracy, and the average overall accuracy was 0.28% and 4.81% higher than UNet and UNet++, respectively. It shows that the introduction of a Transformer enhances the model fitting ability.

Topics & Concepts

Computer scienceConvolutional neural networkLand coverArtificial intelligenceDeep learningSegmentationTransformerEncoderArtificial neural networkRemote sensingPattern recognition (psychology)Machine learningLand useEngineeringGeographyVoltageOperating systemCivil engineeringElectrical engineeringRemote-Sensing Image ClassificationRemote Sensing and LiDAR ApplicationsRemote Sensing in Agriculture
Land Cover Classification of UAV Remote Sensing Based on Transformer–CNN Hybrid Architecture | Litcius