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4 May 2019 Feature Segmentation for Blurred Edge of Ship Image Based on Depth Learning
Jun Shu, Zhangyan Chen, Chenghong Xu
Author Affiliations +
Abstract

Shu, J.; Chen, Z., and Xu, C., 2018. Feature segmentation for blurred edge of ship image based on depth learning. In: Liu, Z.L. and Mi, C. (eds.), Advances in Sustainable Port and Ocean Engineering. Journal of Coastal Research, Special Issue No. 83, pp. 781–785. Coconut Creek (Florida), I SSN 0749-0208.

In traditional feature segmentation for blurred edge of ship image, geometric active contour model is often used, and it does not consider the global feature of ship image, which is easy to occur over segmentation phenomenon, resulting in longtime segmentation and inaccurate segmentation results. On the basis of deep learning, feature segmentation technique for blurred edge of ship image is proposed. Ship image is preprocessed to remove the impurities and noises in the image, and segment the blurred edge of the processed ship image. The experimental results show that the method can reduce the segmentation time of the blurred edge of ship image, and has high efficiency and accurate segmentation results.

©Coastal Education and Research Foundation, Inc. 2018
Jun Shu, Zhangyan Chen, and Chenghong Xu "Feature Segmentation for Blurred Edge of Ship Image Based on Depth Learning," Journal of Coastal Research 83(sp1), 781-785, (4 May 2019). https://doi.org/10.2112/SI83-127.1
Received: 14 October 2017; Accepted: 22 January 2018; Published: 4 May 2019
KEYWORDS
blurred edge
Depth learning
image segmentation
ship image
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