IEEE Access (Jan 2019)

Nearshore Ship Detection on High-Resolution Remote Sensing Image via Scene-Mask R-CNN

  • Yanan You,
  • Jingyi Cao,
  • Yankang Zhang,
  • Fang Liu,
  • Wenli Zhou

DOI
https://doi.org/10.1109/ACCESS.2019.2940102
Journal volume & issue
Vol. 7
pp. 128431 – 128444

Abstract

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Deep convolutional neural network (DCNN) can achieve ship detection mission on the high-resolution remote sensing images. However, the false alarms caused by the onshore ship-like objects may decrease the accuracy and feasibility of these DCNN-based detection frameworks. In our work, an end-to-end method, named as Scene Mask R-CNN, is proposed to reduce the onshore false alarms. The scene mask extraction network (SMEN), as a network branch for scene segmentation, is innovatively introduced into the detection framework. The non-target area is marked out by an inferenced scene mask which is used to assist the ship detection. Combining the feature map originated from feature extraction network (FEN) with the inferenced scene mask by using the edge probability weighted (EPW) merging method, the false candidate targets in the non-target area are excluded. This novel mechanism of DCNN-based ship detection not only maintains the detection accuracy, but also effectively suppresses the false alarms in the non-target area. Finally, the validity and accuracy of this method are verified on a ship dataset generated by the high-resolution optical remote sensing images.

Keywords