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Detection de bateaux dans les images de radar a ouverture synthetique.

机译:在合成孔径雷达图像中检测船只。

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The main purpose of this thesis is to develop efficient algorithms and design a system for ship detection from Synthetic Aperture Radar (SAR) imagery.; Ship detection usually involves through detection of point targets on a radar clutter background. The detection of a ship depends on the physical properties of the ship itself, such as size, shape, and structure; its orientation relative to the radar look-direction; and the general condition of the sea state. Our strategy is to detect all possible ship targets in SAR images, and then search around each candidate for the wake as further evidence.; The objectives of our research are (1) to improve estimation of the parameters in the K-distribution model and to determine the conditions in which an alternative model (Gamma, for example) should be used instead; (2) to explore a PNN (Probabilistic Neural Networks) model as an alternative to the commonly used parameteric models; (3) to design a FC (Fuzzy Clustering) model capable of detecting both small and large ship targets from single-channel images or multi-channel images; (4) to combine wake detection with ship target detection; (5) to design a detection model that can also be used to detect ship targets in coastal areas.; We have developed algorithms for each of these objectives and integrated them into a system comprising six models. The system has been tested on a number of SAR images (SEASAT, ERS and RADARSAT-1, for example) and its performance has been assessed.
机译:本文的主要目的是开发有效的算法,并设计一种用于从合成孔径雷达(SAR)图像进行舰船检测的系统。船舶探测通常涉及通过探测雷达杂波背景上的点目标。船舶的检测取决于船舶本身的物理属性,例如大小,形状和结构;其相对于雷达视线方向的方向;以及海洋状态的一般情况我们的策略是在SAR图像中检测所有可能的船只目标,然后在每个候选者附近搜索尾迹以作为进一步的证据。我们研究的目的是(1)改进对K分布模型中参数的估计并确定应使用替代模型(例如Gamma)的条件; (2)探索PNN(概率神经网络)模型作为常用参数模型的替代方法; (3)设计一种能够从单通道图像或多通道图像中检测大小目标的FC(模糊聚类)模型; (4)结合尾迹检测和船舶目标检测; (5)设计一种检测模型,该模型也可用于检测沿海地区的船舶目标。我们已经针对这些目标中的每一个开发了算法,并将其集成到包含六个模型的系统中。该系统已在许多SAR图像(例如,SEASAT,ERS和RADARSAT-1)上进行了测试,并评估了其性能。

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