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A Diverse Large-Scale Building Dataset and a Novel Plug-and-Play Domain Generalization Method for Building Extraction

Muying Luo, Shunping Ji, Shiqing Wei

2023IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing43 citationsDOIOpen Access PDF

Abstract

In this paper, we introduce a new building dataset and propose a novel domain generalization method to facilitate the development of building extraction from high-resolution remote sensing images. The problem with the current building datasets involves that they lack diversity to train a practical learning model with good generalization ability, and the quality of the labels is unsatisfactory. To address these issues, we built a diverse, large-scale, and high-quality building dataset named the WHU-Mix building dataset, which is more practice-oriented. The WHU-Mix building dataset consists of a training/validation set containing 43,727 diverse images collected from all over the world, and a test set containing 8402 images from five other cities on five continents. In addition, to further improve the generalization ability of a building extraction model, we propose a domain generalization method named batch style mixing (BSM), which can be embedded as an efficient plug-and-play module in the front-end of a building extraction model, providing the model with a progressively larger data distribution to learn data-invariant knowledge. The experiments conducted in this study confirmed the potential of the WHU-Mix building dataset to improve the performance of a building extraction model, resulting in a 6–36% improvement in mIoU, compared to the other existing datasets. The adverse impact of the inaccurate labels in the other datasets can cause about 20% IoU decrease. The experiments also confirmed the high performance of the proposed BSM module in enhancing the generalization ability and robustness of a model, exceeding the baseline model without domain generalization by 13% and the recent domain generalization methods by 4–15% in mIoU.

Topics & Concepts

Computer scienceGeneralizationRobustness (evolution)Model buildingTest setSet (abstract data type)Artificial intelligenceData miningMachine learningBuilding modelScale (ratio)Domain (mathematical analysis)SimulationMathematicsGenePhysicsMathematical analysisBiochemistryChemistryQuantum mechanicsProgramming languageDomain Adaptation and Few-Shot LearningMultimodal Machine Learning ApplicationsInfrastructure Maintenance and Monitoring
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