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Scatterer-based approach to evaluate similarity between 3D em-model and 2D SAR data for ATR

机译:基于散射体的方法来评估ATR的3D em-model和2D SAR数据之间的相似性

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摘要

The similarity evaluation between three-dimensional (3D) electromagnetic model (em-model) and 2D synthetic aperture radar (SAR) data is a key factor in em-model-based SAR automatic target recognition (ATR). In this study, a scatterer-based approach is proposed to evaluate the similarity between 3D em-model and 2D SAR data for ATR purpose. A target is characterised by a set of scatterers and the similarity between 3D em-model and 2D SAR data is evaluated through all these scatterers. First, information of each scatterer is predicted from 3D em-model and used to guide the scatterer extraction from 2D SAR data. Then similarity of each scatterer pair is evaluated through a hypothesis testing approach. In the end, these similarities are synthesized based on Dempster-Shafer (D-S) evidence theory as a whole similarity. The innovative contributions of this study are as follows: a scatterer-based similarity evaluation method between 3D em-model and 2D SAR data at arbitrary target pose is established for ATR purpose. This method is able to resist noises and partial occlusion. Besides, from the result, one can attribute physical information to the measured target. Experiments using data simulated by a high-frequency electromagnetic code verify the validity of the method.
机译:三维(3D)电磁模型(em-model)与2D合成孔径雷达(SAR)数据之间的相似性评估是基于em-model的SAR自动目标识别(ATR)的关键因素。在这项研究中,提出了一种基于散射体的方法来评估3D em模型和2D SAR数据之间为ATR目的的相似性。目标的特征在于一组散射体,并且通过所有这些散射体来评估3D em-model和2D SAR数据之间的相似性。首先,从3D em-model预测每个散射体的信息,并将其用于指导从2D SAR数据中提取散射体。然后,通过假设检验方法评估每个散射体对的相似性。最后,基于Dempster-Shafer(D-S)证据理论将这些相似性作为一个整体相似性进行合成。这项研究的创新贡献如下:为实现ATR,建立了在任意目标姿态下3D em模型和2D SAR数据之间基于散射体的相似性评估方法。该方法能够抵抗噪声和部分遮挡。此外,从结果可以将物理信息归因于被测目标。使用由高频电磁代码模拟的数据进行的实验证明了该方法的有效性。

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