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A feature fusion deep-projection convolution neural network for vehicle detection in aerial images

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  • Bin Wang
  • Bin Xu

Abstract

With the rapid development of Unmanned Aerial Vehicles, vehicle detection in aerial images plays an important role in different applications. Comparing with general object detection problems, vehicle detection in aerial images is still a challenging research topic since it is plagued by various unique factors, e.g. different camera angle, small vehicle size and complex background. In this paper, a Feature Fusion Deep-Projection Convolution Neural Network is proposed to enhance the ability to detect small vehicles in aerial images. The backbone of the proposed framework utilizes a novel residual block named stepwise res-block to explore high-level semantic features as well as conserve low-level detail features at the same time. A specially designed feature fusion module is adopted in the proposed framework to further balance the features obtained from different levels of the backbone. A deep-projection deconvolution module is used to minimize the impact of the information contamination introduced by down-sampling/up-sampling processes. The proposed framework has been evaluated by UCAS-AOD, VEDAI, and DOTA datasets. According to the evaluation results, the proposed framework outperforms other state-of-the-art vehicle detection algorithms for aerial images.

Suggested Citation

  • Bin Wang & Bin Xu, 2021. "A feature fusion deep-projection convolution neural network for vehicle detection in aerial images," PLOS ONE, Public Library of Science, vol. 16(5), pages 1-22, May.
  • Handle: RePEc:plo:pone00:0250782
    DOI: 10.1371/journal.pone.0250782
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