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Ship Detection for Optical Remote Sensing Images Based on Visual Attention Enhanced Network

机译:基于视觉注意力增强网络的光学遥感图像舰船检测

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摘要

Ship detection plays a significant role in military and civil fields. Although some state-of-the-art detection methods, based on convolutional neural networks (CNN) have certain advantages, they still cannot solve the challenge well, including the large size of images, complex scene structure, a large amount of false alarm interference, and inshore ships. This paper proposes a ship detection method from optical remote sensing images, based on visual attention enhanced network. To effectively reduce false alarm in non-ship area and improve the detection efficiency from remote sensing images, we developed a light-weight local candidate scene network(L2CSN) to extract the local candidate scenes with ships. Then, for the selected local candidate scenes, we propose a ship detection method, based on the visual attention DSOD(VA-DSOD). Here, to enhance the detection performance and positioning accuracy of inshore ships, we both extract semantic features, based on DSOD and embed a visual attention enhanced network in DSOD to extract the visual features. We test the detection method on a large number of typical remote sensing datasets, which consist of Google Earth images and GaoFen-2 images. We regard the state-of-the-art method [sliding window DSOD (SW+DSOD)] as a baseline, which achieves the average precision (AP) of 82.33%. The AP of the proposed method increases by 7.53%. The detection and location performance of our proposed method outperforms the baseline in complex remote sensing scenes.
机译:船舶检测在军事和民用领域中发挥着重要作用。尽管基于卷积神经网络(CNN)的一些最新检测方法具有一定优势,但它们仍然无法很好地解决挑战,包括图像大,场景结构复杂,大量的虚假警报干扰以及近海船只。提出了一种基于视觉注意力增强网络的光学遥感图像舰船检测方法。为了有效减少非舰船区域的误报并提高遥感图像的检测效率,我们开发了一种轻量级的本地候选场景网络( L 2 < / mrow> CSN)来提取船只的本地候选场景。然后,针对选定的局部候选场景,提出一种基于视觉注意力DSOD(VA-DSOD)的舰船检测方法。在这里,为了提高近海舰船的检测性能和定位精度,我们都基于DSOD提取了语义特征,并在DSOD中嵌入了视觉注意力增强网络以提取视觉特征。我们在大量典型的遥感数据集(包括Google Earth图像和GaoFen-2图像)上测试了检测方法。我们以最先进的方法[滑动窗口DSOD(SW + DSOD)]为基准,该方法可实现82.33%的平均精度(AP)。该方法的AP增加了7.53%。在复杂的遥感场景中,我们提出的方法的检测和定位性能优于基线。

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