Aerial Imagery Redefined: Next-Generation Approach to Object Classification

Eran Dahan, Itzhak Aviv, Tzvi Diskin

Research output: Contribution to journalArticlepeer-review

Abstract

Identifying and classifying objects in aerial images are two significant and complex issues in computer vision. The fine-grained classification of objects in overhead images has become widespread in various real-world applications, due to recent advancements in high-resolution satellite and airborne imaging systems. The task is challenging, particularly in low-resource cases, due to the minor differences between classes and the significant differences within each class caused by the fine-grained nature. We introduce Classification of Objects for Fine-Grained Analysis (COFGA), a recently developed dataset for accurately categorizing objects in high-resolution aerial images. The COFGA dataset comprises 2104 images and 14,256 annotated objects across 37 distinct labels. This dataset offers superior spatial information compared to other publicly available datasets. The MAFAT Challenge is a task that utilizes COFGA to improve fine-grained classification methods. The baseline model achieved a mAP of 0.6. This cost was 60, whereas the most superior model achieved a score of 0.6271 by utilizing state-of-the-art ensemble techniques and specific preprocessing techniques. We offer solutions to address the difficulties in analyzing aerial images, particularly when annotated and imbalanced class data are scarce. The findings provide valuable insights into the detailed categorization of objects and have practical applications in urban planning, environmental assessment, and agricultural management. We discuss the constraints and potential future endeavors, specifically emphasizing the potential to integrate supplementary modalities and contextual information into aerial imagery analysis.

Original languageEnglish
Article number134
JournalInformation (Switzerland)
Volume16
Issue number2
DOIs
StatePublished - Feb 2025
Externally publishedYes

Bibliographical note

Publisher Copyright:
© 2025 by the authors.

Keywords

  • aerial imagery
  • computer vision
  • dataset
  • ensemble methods
  • fine-grained classification
  • multilabel learning algorithms

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