Understanding the scenes provided by remote sensing (RS) images has drawn increasing attention in the last decade. It is to automatically classify a RS scene image by feature extraction and label assignment. Although much effort has been dedicated to developing discriminative feature extraction as well as automatic classification techniques it is still very challenging owing to the complex distributions of the ground objects in high spatial resolution scenes. To enhance the ability to represent the RS scenes an integration of multiple types of features for remote sensing scenes is considered as an effective way. Nevertheless different kinds of features possess different characteristics and how to fuse them together is a critical problem. In this paper to fuse three different but complementary types of features that are extracted to characterize global attributes of scenes together a discriminant correlation analysis based feature-level fusion approach is proposed which maximizes the correlation of corresponding features across the two feature sets and in addition de-correlates features that belong to different classes within each feature set. In addition to further improve the scene classification performance another kind of information fusion form called decision-level fusion is adopted in the classification stage. In our proposed decision-level fusion technique the final results of multiple classifiers are combined via majority voting. Extensive experiments results conducted on the well-known SIRI-WHU dataset the WHU-RS dataset and the UC Merced Land Use dataset have demonstrated that the proposed remote sensing scene classification method based on heterogeneous feature extraction and multi-level fusion is superior to many state-of-the-art scene classification algorithms.
CITATION STYLE
Wang, X., Xu, M., Xiong, X., & Ning, C. (2020). Remote Sensing Scene Classification Using Heterogeneous Feature Extraction and Multi-Level Fusion. IEEE Access, 8, 217628–217641. https://doi.org/10.1109/ACCESS.2020.3042501
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