Remote sensing image scene classification and remote sensing technology applications are hot research topics.Although CNN-based models have reached high average accuracy,some classes are still misclassified,such as“f...Remote sensing image scene classification and remote sensing technology applications are hot research topics.Although CNN-based models have reached high average accuracy,some classes are still misclassified,such as“freeway,”“spare residential,”and“commercial_area.”These classes contain typical decisive features,spatial-relation features,and mixed decisive and spatial-relation features,which limit high-quality image scene classification.To address this issue,this paper proposes a Grad-CAM and capsule network hybrid method for image scene classification.The Grad-CAM and capsule network structures have the potential to recognize decisive features and spatial-relation features,respectively.By using a pre-trained model,hybrid structure,and structure adjustment,the proposed model can recognize both decisive and spatial-relation features.A group of experiments is designed on three popular data sets with increasing classification difficulties.In the most advanced experiment,92.67%average accuracy is achieved.Specifically,83%,75%,and 86%accuracies are obtained in the classes of“church,”“palace,”and“commercial_area,”respectively.This research demonstrates that the hybrid structure can effectively improve performance by considering both decisive and spatial-relation features.Therefore,Grad-CAM-CapsNet is a promising and powerful structure for image scene classification.展开更多
基金funded by the open fund of the Key Laboratory of Jianghuai Arable Land Resources Protection and Eco-restoration(Ministry of Natural Resources)(No.2022-ARPE-KF04)the Open Fund of Key Laboratory of Urban Land Resources Monitoring and Simulation(Ministry of Natural Resources)(No.KF-2020-05-084).
文摘Remote sensing image scene classification and remote sensing technology applications are hot research topics.Although CNN-based models have reached high average accuracy,some classes are still misclassified,such as“freeway,”“spare residential,”and“commercial_area.”These classes contain typical decisive features,spatial-relation features,and mixed decisive and spatial-relation features,which limit high-quality image scene classification.To address this issue,this paper proposes a Grad-CAM and capsule network hybrid method for image scene classification.The Grad-CAM and capsule network structures have the potential to recognize decisive features and spatial-relation features,respectively.By using a pre-trained model,hybrid structure,and structure adjustment,the proposed model can recognize both decisive and spatial-relation features.A group of experiments is designed on three popular data sets with increasing classification difficulties.In the most advanced experiment,92.67%average accuracy is achieved.Specifically,83%,75%,and 86%accuracies are obtained in the classes of“church,”“palace,”and“commercial_area,”respectively.This research demonstrates that the hybrid structure can effectively improve performance by considering both decisive and spatial-relation features.Therefore,Grad-CAM-CapsNet is a promising and powerful structure for image scene classification.