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A remote sensing ship recognition method based on dynamic probability generative model

机译:基于动态概率生成模型的遥感船识别方法

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摘要

Aiming at detecting sea targets reliably and timely, a novel ship recognition method using optical remote sensing data based on dynamic probability generative model is presented. First, with the visual saliency detection method, prior shape information of target objects in put images which is used to describe the initial curve adaptively is extracted, and an improved Chan-Vese (CV) model based on entropy and local neighborhood information is utilized for image segmentation. Second, based on rough set theory, the common discernibility degree is used to compute the significance weight of each candidate feature and select valid recognition features automatically. Finally, for each node, its neighbor nodes are sorted by their ε-neighborhood distances to the node. Using the classes of the selected nodes from top of sorted neighbor nodes list, a dynamic probability generative model is built to recognize ships in data from optical remote sensing system. Experimental results on real data show that the proposed approach can get better classification rates at a higher speed than the k-nearest neighbor (KNN), support vector machines (SVM) and traditional hierarchical discriminant regression (HDR) method.
机译:为了可靠,及时地检测出海洋目标,提出了一种基于动态概率生成模型的光学遥感数据船舶识别方法。首先,通过视觉显着性检测方法,提取用于自适应地描述初始曲线的放置图像中目标对象的先验形状信息,并将基于熵和局部邻域信息的改进的Chan-Vese(CV)模型用于图像分割。其次,基于粗糙集理论,使用共同的可分辨度来计算每个候选特征的显着权重,并自动选择有效的识别特征。最后,对于每个节点,其邻居节点按它们到该节点的ε邻居距离排序。使用从排序后的邻居节点列表顶部选择的节点的类别,建立动态概率生成模型,以识别来自光学遥感系统的数据中的船只。实际数据的实验结果表明,与k最近邻法(KNN),支持向量机(SVM)和传统的分层判别回归(HDR)方法相比,该方法可以更快地获得更好的分类率。

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