Abstract

Ship targets are important carriers of maritime behavior, and ship target detection has important economic and military value. Owing to its excellent characteristics, synthetic aperture radar (SAR) is widely used to detect sea targets. SAR ship detection has always been a popular field of research. The excellent performance of deep neural networks in computer vision has facilitated their application to SAR image detection. However, several problems remain in SAR ship detection at this stage. First, SAR ship targets differ significantly in size, and how to deal with multi-scale ship detection has, therefore, been a difficult research topic. Second, the size of a SAR ship target is small in low-resolution images, and thus, dealing with small size target detection is also difficult. Therefore, we propose a dense connection DetNet (DDNet), which is specifically used for SAR ship detection. The network consists of two parts: backbone sub-network and prediction sub-network. In the backbone subnetwork, we refer to DetNet, and use a stacked convolution layer instead of large downsampling to make it more suitable for small ship detection. In the prediction sub-network, we use a dense connection to fuse features of different scales, allowing it to better deal with multi-scale ship detection. The feature reuse strategy is used to improve the parameter efficiency. The experiments on SAR ship datasets show that our method performs better than other methods in small-size and complex background ship detection.

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