Publication | Closed Access
SAR Ship Detection Based on Resnet and Transfer Learning
52
Citations
14
References
2019
Year
Unknown Venue
RadarConvolutional Neural NetworkEngineeringMachine LearningData ScienceAerospace EngineeringSynthetic Aperture RadarPattern RecognitionShip DetectionAutoencodersMachine Learning ModelAutomatic Target RecognitionSar Ship DetectionRadar Image ProcessingRadar Signal ProcessingTransfer LearningDeep Learning
Synthetic Aperture Radar (SAR) ship detection has been a research hotspot and is significant for marine surveillance. Traditional constant false alarm rate (CFAR) detector has the disadvantages of high false alarm and poor adaptability. Deep learning provides a unique solution for SAR ship detection. However, the traditional deep network cannot reach very deep thus the accuracy is limited, and the training speed is slow. In this paper, a very deep network ResNet with higher accuracy and faster training speed is applied to train the SAR ship detection model. Moreover, transfer learning is applied to combat the small dataset. The proposed method is tested on a general SAR ship dataset and achieves 94.7% average precision. Comparative experiments show that our method has the best performance and which verifies the effectiveness of our method.
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