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Small-target detection in multispectral imagery with cyclic overlay processing

机译:多光谱图像中的小目标检测与循环叠加处理

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Abstract: The detection of small, hostile targets in multispectral imagery is generally complicated by sensor noise, atmospheric obscurants, and spatial distortions induced by the point-spread function (PSF). Traditional methods for multispectral detection of small targets, such as signature- based discrimination predicated upon deterministic physical models, have not proven robust in the presence of camera noise at low light levels. The additional problem of target variability also confounds a signature-based approach. Due to time-dependent variations in illuminant spectra response, targets can appear to have different spectral properties at different times of day and under various weather conditions. In this paper, we discuss computationally efficient methods for locating targets that differ spectrally from their spatially adjacent backgrounds but are similar to features located elsewhere in the source image. In particular, we note that flicker effects can be produced in which target intensity appears to vary differently with background intensity. Such effects are produced computationally by cyclic overlay processing (COP), which sequentially displays monospectral band images to achieve different perceived flicker rates of target and background. When combined with knowledge about the human visual system (HVS), COP can be successfully used in conjunction with neighborhood operations to segment target regions in highly cluttered imagery. We emphasize the role of target-background contrast in potentiating flicker effects, and discuss algorithms for computing COP. Analyses emphasize computational cost and effectiveness of various COP filter configurations for detecting targets that are similar to, or partially obscured by, surrounding cover or earth. We also discuss the implementation of our algorithms on parallel processors, in particular, the parallel algebraic logic (PAC) architecture currently being implemented in cooperation with Lockheed- Martin and USAF Wright Laboratory. Our algorithms are written in image algebra, a rigorous, concise, inherently parallel notation that unifies linear and nonlinear mathematics in the image domain and has been implemented on a variety of parallel processors. Thus, our algorithms are both feasible and portable. !13
机译:摘要:在多光谱图像中检测小的敌对目标通常会因传感器噪声,大气遮挡物以及点扩展函数(PSF)引起的空间畸变而变得复杂。对于小目标进行多光谱检测的传统方法,例如基于确定性物理模型的基于特征的识别,在低照度下存在相机噪声的情况下,尚未被证明具有鲁棒性。目标可变性的另一个问题也混淆了基于签名的方法。由于光源光谱响应随时间的变化,目标在一天中的不同时间和各种天气条件下似乎具有不同的光谱特性。在本文中,我们讨论了用于定位目标的有效计算方法,这些目标在光谱上与其空间相邻的背景不同,但与源图像中其他位置的特征相似。特别是,我们注意到可以产生闪烁效果,其中目标强度似乎会随背景强度而变化。这种效果是通过循环叠加处理(COP)在计算上产生的,该循环叠加处理顺序显示单光谱波段图像,以实现目标和背景的不同感知闪烁率。当结合有关人类视觉系统(HVS)的知识时,COP可以成功地与邻域操作结合使用,以在高度混乱的图像中分割目标区域。我们强调目标背景对比度在增强闪烁效果中的作用,并讨论计算COP的算法。分析强调了各种COP过滤器配置用于检测与周围覆盖物或大地相似或部分被其遮挡的目标的计算成本和有效性。我们还将讨论在并行处理器上实现算法的方法,特别是目前与洛克希德·马丁公司和美国空军怀特实验室合作实施的并行代数逻辑(PAC)体系结构。我们的算法以图像代数编写,图像代数是一种严格,简洁,固有的并行表示法,它将图像域中的线性和非线性数学统一起来,并已在多种并行处理器上实现。因此,我们的算法既可行又可移植。 !13

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