Abstract
As the application scenarios of remote sensing imagery (RSI) become richer, the task of ship detection from an overhead perspective is of great significance. Compared with traditional methods, the use of deep learning ideas has more prospects. However, the Convolutional Neural Network (CNN) has poor resistance to sample differences in detection tasks, and the huge differences in the image environment, background, and quality of RSIs affect the performance for target detection tasks; on the other hand, upsampling or pooling operations result in the loss of detailed information in the features, and the CNN with outstanding results are often accompanied by a high computation and a large amount of memory storage. Considering the characteristics of ship targets in RSIs, this study proposes a detection framework combining an image enhancement module with a dense feature reuse module: (1) drawing on the ideas of the generative adversarial network (GAN), we designed an image enhancement module driven by object characteristics, which improves the quality of the ship target in the images while augmenting the training set; (2) the intensive feature extraction module was designed to integrate low-level location information and high-level semantic information of different resolutions while minimizing the computation, which can improve the efficiency of feature reuse in the network; (3) we introduced the receptive field expansion module to obtain a wider range of deep semantic information and enhance the ability to extract features of targets were at different sizes. Experiments were carried out on two types of ship datasets, optical RSI and Synthetic Aperture Radar (SAR) images. The proposed framework was implemented on classic detection networks such as You Only Look Once (YOLO) and Mask-RCNN. The experimental results verify the effectiveness of the proposed method.
Highlights
Object detection on remote sensing imagery has broad prospects in both military and civilian fields [1], and it plays a huge role in various scenarios, such as in the ocean, forestry [2], and transportation
Our proposed ship target detection method is considered from three aspects, and three modules are designed to be combined with the basic network to improve the overall performance of remote sensing image ship detection
In this paper, based on satellite-oriented ship detection task as our basic goal, as well as the characterization of ship datasets, a network framework for ship detection based on remote sensing images is proposed, and three modules, object characteristic-driven image enhancement (OCIE), dense feature reuse (DFR), and receptive field expansion (RFE), are designed
Summary
Object detection on remote sensing imagery has broad prospects in both military and civilian fields [1], and it plays a huge role in various scenarios, such as in the ocean, forestry [2], and transportation. Remote sensing images obtained from satellite sensors have different viewing angles. They contain different complex landscapes and are usually more susceptible to atmospheric, background clutter, and lighting differences, having fewer spatial details [3]. For ship target detection studies with remote sensing imagery (RSI), ship targets show unique target characteristics. According to the different imaging mechanism of satellite imagery, RSI can be roughly divided into two types of datasets, namely, optical datasets
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