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Target detection in infrared and SAR terrain images using a non-Gaussian stochastic model

机译:使用非高斯随机模型的红外和SAR地形图像中的目标检测

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Automatic detection of targets in natural terrain images is a difficult problem when the size and brightness of the targets is similar to that of the background clutter. The best results are achieved by techniques that are built on modeling the images as a stochastic process and detection as a problem in statistical decision theory. The current paper follows this approach in developing a new stochastic model for images of natural terrain and introducing some novel detection techniques for small targets that are based on hypothesis testing of neighborhoods of pixels. The new stochastic model assumes the observed image to be a pointwise transform of an underlying stationary Gaussian random field. This model works well in practice for a wide range of electro-optic and synthetic aperture radar (SAR) natural images. Furthermore the model motivates the design of target detection algorithms based on hypothesis tests of the likelihood of pixel neighborhoods in the underlying Gaussian image. We have developed a suite of detection algorithms with this model, and have trailled them on ensembles of real infra-red and SAR images containing small artificially inserted targets at random locations. Receiver operating characteristics (ROCs) have been compiled, and the dependence of detection statistics on the target to background contrast ratio has been explored. The results show that for the infrared imagery the model-based algorithms compare favorably with the standard adaptive threshold detector and the generalized matched filter detector. In the case of SAR imagery with unobscured targets, the generalized matched filter performance is superior, but the model-based algorithms have the advantage of not requiring prior information on target statistics. While all algorithms have similar poor performance for infrared images with low contrast ratios, the new algorithms significantly outperform existing techniques where there is good contrast. Finally the advantages and disadvantages of applying such techniques in practical detection systems are discussed.
机译:当目标的尺寸和亮度类似于背景杂波的尺寸和亮度时,自动检测自然地形图像中的目标是难题。最好的结果是通过基于将图像建模作为随机过程和检测作为统计决策理论的问题的技术来实现的。目前论文遵循这种方法在为基于像素邻域的假设检测的小目标引入一些新的检测技术来开发一种新的随机模型。新的随机模型假定观察到的图像是底层静止高斯随机字段的点。该模型在实践中适用于各种电光和合成孔径雷达(SAR)自然图像。此外,该模型的基于基于底层高斯图像中的像素邻域的可能性的假设检测算法的设计。我们已经开发了一套具有此模型的检测算法,并在随机位置的实际红外线和SAR图像的集合上捕获它们。已经编译了接收器操作特征(ROC),并探讨了检测统计数据对背景对比度的目标。结果表明,对于红外图像,基于模型的算法与标准自适应阈值检测器和广义匹配滤波器检测器相比优势。在具有视野开发目标的SAR图像的情况下,广义匹配的滤波器性能优越,但基于模型的算法具有不需要先前信息的优势。虽然所有算法对具有低对比度的红外图像具有类似的性能,但新算法显着优于存在良好对比的现有技术。最后讨论了在实际检测系统中应用这种技术的优点和缺点。

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