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SAR Ship Target Recognition via Multiscale Feature Attention and Adaptive-Weighed Classifier

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Maritime surveillance is indispensable for civilian fields, including national maritime safeguarding, channel monitoring, and so on, in which synthetic aperture radar (SAR) ship target recognition is a crucial research field.… Click to show full abstract

Maritime surveillance is indispensable for civilian fields, including national maritime safeguarding, channel monitoring, and so on, in which synthetic aperture radar (SAR) ship target recognition is a crucial research field. The core problem to realizing accurate SAR ship target recognition is the large inner class variance and interclass overlap of SAR ship features, which limits the recognition performance. Most existing methods plainly extract multiscale features of the network and use equally each feature scale in the classification stage. However, the shallow multiscale features are not discriminative enough, and each scale feature is not equally effective for recognition. These factors lead to the limitation of recognition performance. Therefore, we proposed an SAR ship recognition method via multiscale feature attention and adaptive-weighted classifier to enhance features in each scale, and adaptively choose the effective feature scale for accurate recognition. We first construct an in-network feature pyramid to extract multiscale features from SAR ship images. Then, the multiscale feature attention can extract and enhance the principal components from the multiscale features with more inner class compactness and interclass separability. Finally, the adaptive-weighted classifier chooses the effective feature scales in the feature pyramid to achieve the final precise recognition. Through experiments and comparisons under the OpenSARship dataset, the proposed method is validated to achieve state-of-the-art performance for SAR ship recognition.

Keywords: recognition; ship target; sar ship; feature

Journal Title: IEEE Geoscience and Remote Sensing Letters
Year Published: 2023

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