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COFGA: Classification Of Fine-Grained Features In Aerial Images

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arxiv 1808.09001 v1 pith:HGPDDXDA submitted 2018-08-27 cs.CV

COFGA: Classification Of Fine-Grained Features In Aerial Images

classification cs.CV
keywords imagesaerialclassificationobjectscofgadeepfine-grainedmulti-class
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Classification between thousands of classes in high-resolution images is one of the heavily studied problems in deep learning over the last decade. However, the challenge of fine-grained multi-class classification of objects in aerial images, especially in low resource cases, is still challenging and an active area of research in the literature. Solving this problem can give rise to various applications in the field of scene understanding and classification and re-identification of specific objects from aerial images. In this paper, we provide a description of our dataset - COFGA of multi-class annotated objects in aerial images. We examine the results of existing state-of-the-art models and modified deep neural networks. Finally, we explain in detail the first published competition for solving this task.

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  1. A Comparison of Super-Resolution and Nearest Neighbors Interpolation Applied to Object Detection on Satellite Data

    cs.CV 2019-07 accept novelty 2.0

    Nearest-neighbor interpolation matches multi-scale deep super-resolution performance for vehicle detection on 4x-upscaled xView satellite imagery, with a 0.0002 AP difference.