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Proposal based saliency model for generic target detection in remote sensing image

机译:基于提议的显着性模型用于遥感图像中的一般目标检测

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Object detection in remote sensing images have become prominent due to their importance in remote sensing image analysis. This paper presents a novel automatic generic objects detection method that is based on coarse-to-fine saliency. First, we proposed a background based sparse reconstruction algorithm to construct a coarse saliency map which can precisely highlight the salient foreground while suppress the background. Then, we collect training samples from coarse saliency map for second step. Second, a strong classifier based on the training samples is constructed to detect salient pixels. By introducing the object proposals method to enhance the results from the strong classifier, we construct the fine saliency map which can highlight the target completely. In order to further improve the detection performance, multi-scale saliency maps are integrated to generate the final saliency map. Quantitative analyses of experiment results on a real remote sensing image data set containing 200 images of airport, residence and oil-tank verify that proposed algorithm outperforms 10 state-of-art saliency models.
机译:遥感图像中的物体检测由于其在遥感图像分析中的重要性而变得十分重要。本文提出了一种基于粗糙到精细显着性的新型自动通用目标检测方法。首先,我们提出了一种基于背景的稀疏重建算法来构造一个粗糙的显着图,该图可以在突出背景的同时精确地突出显示显着的前景。然后,我们从粗糙显着图收集训练样本进行第二步。第二,构造基于训练样本的强分类器以检测显着像素。通过引入对象建议方法以增强强分类器的结果,我们构造了可以显着突出目标的精细显着性图。为了进一步提高检测性能,集成了多尺度显着图以生成最终显着图。对包含200个机场,住宅和油箱图像的真实遥感图像数据集进行的实验结果进行定量分析,验证了所提出的算法优于10个最新的显着性模型。

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