Publication | Open Access
CRTransSar: A Visual Transformer Based on Contextual Joint Representation Learning for SAR Ship Detection
142
Citations
37
References
2022
Year
Convolutional Neural NetworkEngineeringMachine LearningSar Ship DetectionMulti-image FusionRepresentation LearningImage ClassificationImage AnalysisData ScienceSynthetic-aperture RadarComputational ImagingVideo TransformerVision RecognitionRadiologyMachine VisionFeature LearningSynthetic Aperture RadarAutomatic Target RecognitionObject DetectionImage Target DetectionDeep LearningComputer VisionVisual TransformerRadarObject RecognitionSar Target FeatureRadar Image Processing
Synthetic-aperture radar (SAR) image target detection is widely used in military, civilian and other fields. However, existing detection methods have low accuracy due to the limitations presented by the strong scattering of SAR image targets, unclear edge contour information, multiple scales, strong sparseness, background interference, and other characteristics. In response, for SAR target detection tasks, this paper combines the global contextual information perception of transformers and the local feature representation capabilities of convolutional neural networks (CNNs) to innovatively propose a visual transformer framework based on contextual joint-representation learning, referred to as CRTransSar. First, this paper introduces the latest Swin Transformer as the basic architecture. Next, it introduces the CNN’s local information capture and presents the design of a backbone, called CRbackbone, based on contextual joint representation learning, to extract richer contextual feature information while strengthening SAR target feature attributes. Furthermore, the design of a new cross-resolution attention-enhancement neck, called CAENeck, is presented to enhance the characterizability of multiscale SAR targets. The mAP of our method on the SSDD dataset attains 97.0% accuracy, reaching state-of-the-art levels. In addition, based on the HISEA-1 commercial SAR satellite, which has been launched into orbit and in whose development our research group participated, we released a larger-scale SAR multiclass target detection dataset, called SMCDD, which verifies the effectiveness of our method.
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