Title
Learning Deep Ship Detector in SAR Images From Scratch
Abstract
Recently, deep learning-based methods have brought new ideas for ship detection in synthetic aperture radar (SAR) images. However, several challenges still exist: 1) deep models contain millions of parameters, whereas the available annotated samples are not sufficient in number for training. Therefore, most deep detectors have to fine-tune networks pre-trained on ImageNet, which incurs learning bias due to the huge domain mismatch between SAR images and ImageNet images. Furthermore, it has a little flexibility to redesign the network structure; and 2) ships in SAR images are relatively small in size and densely clustered, whereas most deep detectors have poor performance with small objects due to the rough feature map used for detection and the extreme foreground–background imbalance. To address these problems, this paper proposes an effective approach to learn deep ship detector from scratch. First, we design a condensed backbone network, which consists of several dense blocks. Hence, earlier layers can receive additional supervision from the objective function through the dense connections, which makes it easy to train. In addition, feature reuse strategy is adopted to make it highly parameter efficient. Therefore, the backbone network could be freely designed and effectively trained from scratch without using a large amount of annotated samples. Second, we improve the cross-entropy loss to address the foreground–background imbalance and predict multi-scale ship proposals from several intermediate layers to improve the recall rate. Then, position-sensitive score maps are adopted to encode position information into each ship proposal for discrimination. The comparison results on the Sentinel-1 data set show that: 1) learning ship detector from scratch achieved better performance than ImageNet pre-trained model-based detectors and 2) our method is more effective than existing algorithms for detecting the small and densely clustered ships.
Year
DOI
Venue
2019
10.1109/TGRS.2018.2889353
IEEE Transactions on Geoscience and Remote Sensing
Keywords
Field
DocType
Marine vehicles,Synthetic aperture radar,Detectors,Proposals,Task analysis,Training,Feature extraction
ENCODE,Computer vision,Scratch,Synthetic aperture radar,Reuse,Artificial intelligence,Deep learning,Detector,Backbone network,Mathematics,Network structure
Journal
Volume
Issue
ISSN
57
6
0196-2892
Citations 
PageRank 
References 
2
0.36
0
Authors
4
Name
Order
Citations
PageRank
Zhipeng Deng1472.66
Hao Sun2567.07
Shilin Zhou3434.75
Juanping Zhao462.14