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Infrared target detection with probability density functions of wavelet transform subbands

机译:小波变换子带概率密度函数的红外目标检测

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摘要

We report the development of a wavelet multiresolution texture-based algorithm that uses the probability density functions (PDFs) of the subband of the wavelet decomposition of an image. The moments of these pdfs are used in a clustering algorithm to segment the targets from their background clutter. Using the tools of experimental methodology, we evaluate the performance of this algorithm on real infrared imagery under varying algorithm parameter sets as well as scene, image, and false-alarm conditions. We estimate a set of multidimensional predictive analytic performance models that relate the detection probabilities as functions of false alarm, algorithm internal parameter, target pixel number, target-to-background interference ratio, target-interference ratio, and Fechner-Weber and local entropy metrics in the scene. These models can be used to predict performance in regions were no data are available and to optimize performance by selection of the optimum parameter and constant false-alarm values in regions with known scene and metric conditions.
机译:我们报告了基于小波多分辨率纹理的算法的发展,该算法使用图像的小波分解子带的概率密度函数(PDF)。这些pdf的时刻在聚类算法中用于从背景杂波中分割目标。使用实验方法学的工具,我们在变化的算法参数集以及场景,图像和错误警报条件下,评估了该算法在真实红外图像上的性能。我们估计了一组多维预测分析性能模型,这些模型将检测概率与虚警,算法内部参数,目标像素数,目标背景干扰比,目标干扰比以及Fechner-Weber和局部熵度量等函数相关在现场。这些模型可用于在没有可用数据的区域中预测性能,并通过选择具有已知场景和度量条件的区域中的最佳参数和恒定的虚警值来优化性能。

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