Comparative Performance of U-Net CNN in Multi-Class Aircraft Segmentation and Classification Using Polygon and Bounding Box Annotations
DOI:
https://doi.org/10.55981/ijoa.2025.8155Keywords:
U-Net CNN, Multi-Class Classification, Polygon Annotations, Bounding Box Annotations, Image SegmentationAbstract
Recent advancements in deep learning have revolutionized image processing
tasks such as segmentation and classification. This study investigates the
performance of U- Net-CNN models in multi-class aircraft segmentation and
classification using polygon and bounding box annotations. Military aircraft
classification is crucial for defense applications, as it aids in rapid and accurate
decision-making during critical missions. This study investigates how
these annotation methods affect training time, segmentation accuracy, and
classification performance in multi-class segmentation and classification tasks
involving military aircraft. The research compares polygon and bounding box
methods to evaluate their effectiveness in capturing object details and computational
efficiency. While polygon annotations achieved superior precision with
a mean test accuracy of 0.987 and lower loss of 0.041, bounding boxes excelled
in computational efficiency. Future research should expand datasets and explore
additional annotation techniques to further generalize these findings.
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Copyright (c) 2025 Rivilyo Mangolat Rizky Sitanggang, Dianita, Bambang Setiadi, Yanif Dwi Kuntjoro

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