首页> 外文会议>Conference on Algorithms for Synthetic Aperture Radar Imagery XI; 20040412-20040415; Orlando,FL; US >Prediction-Based Registration: An Automated Multi-INT Registration Algorithm
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Prediction-Based Registration: An Automated Multi-INT Registration Algorithm

机译:基于预测的注册:自动Multi-INT注册算法

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This paper presents an algorithm for the automatic georegistration of electro-optical (EO) and synthetic aperture radar (SAR) imagery intelligence (IMDMT). The algorithm uses a scene reference model in a global coordinate frame to register the incoming MINT, or mission image. Auxiliary data from the mission image and this model predict a synthetic reference image of a scene at the same collection geometry as the mission image. This synthetic image provides a traceback structure relating the synthetic reference image to the scene model. A correlation matching technique is used to register the mission image to the synthetic reference image. Once the matching has been completed, mission image pixels can be transformed into the corresponding synthetic reference image. Using the traceback structure associated with the synthetic reference image, these pixels can then be transformed into the scene model space. Since the scene model space exists in a global coordinate frame, the mission image has been georegistered. This algorithm is called Prediction-Based Registration (PBR). There are a number of advantages to the PBR approach. First, the transformation from image space to scene model space is computed as a 3D to 2D transformation. This avoids solving the ill-posed problem of directly transforming a 2D image into 3D space. The generation of a synthetic reference simplifies the image matching process by creating the synthetic reference at the same geometry as the mission image. Further, dissimilar sensor phenomenologies are accounted for by using the appropriate sensor model. This allows sensor platform and image formation errors to be accounted for in their own domain when multiple sensors are being registered.
机译:本文提出了一种用于光电(EO)和合成孔径雷达(SAR)图像智能(IMDMT)的自动地理配准的算法。该算法在全局坐标系中使用场景参考模型来注册传入的MINT或任务图像。来自任务图像和此模型的辅助数据可预测与任务图像具有相同集合几何形状的场景的合成参考图像。该合成图像提供了将合成参考图像与场景模型相关联的回溯结构。相关匹配技术用于将任务图像配准到合成参考图像。匹配完成后,任务图像像素可以转换为相应的合成参考图像。使用与合成参考图像关联的回溯结构,然后可以将这些像素转换到场景模型空间中。由于场景模型空间存在于全局坐标系中,因此任务图像已进行地理配准。该算法称为基于预测的注册(PBR)。 PBR方法有许多优点。首先,将从图像空间到场景模型空间的转换计算为3D到2D转换。这避免了解决直接将2D图像转换为3D空间的不适问题。合成参考的生成通过以与任务图像相同的几何形状创建合成参考来简化图像匹配过程。此外,通过使用适当的传感器模型来解决不相似的传感器现象。当注册多个传感器时,这可以在自己的范围内解决传感器平台和图像形成错误。

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