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A Visual Search Inspired Computational Model for Ship Detection in Optical Satellite Images

机译:视觉搜索启发式光学卫星图像船舶检测计算模型

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摘要

In this letter, we propose a novel computational model for automatic ship detection in optical satellite images. The model first selects salient candidate regions across entire detection scene by using a bottom-up visual attention mechanism. Then, two complementary types of top-down cues are employed to discriminate the selected ship candidates. Specifically, in addition to the detailed appearance analysis of candidates, a neighborhood similarity-based method is further exploited to characterize their local context interactions. Furthermore, the framework of our model is designed in a multiscale and hierarchical manner which provides a plausible approximation to a visual search process and reasonably distributes the computational resources. Experiments over panchromatic SPOT5 data prove the effectiveness and computational efficiency of the proposed model.
机译:在这封信中,我们提出了一种新颖的计算模型,用于光学卫星图像中的自动舰船检测。该模型首先通过使用自下而上的视觉注意机制在整个检测场景中选择显着的候选区域。然后,采用两种互补类型的自上而下的提示来区分所选的候选船。具体而言,除了对候选人进行详细的外观分析之外,还进一步利用基于邻域相似性的方法来表征其本地上下文交互。此外,我们的模型框架以多尺度和分层的方式设计,为视觉搜索过程提供了合理的近似,并合理地分配了计算资源。对全色SPOT5数据进行的实验证明了该模型的有效性和计算效率。

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