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Statistical Models for Target Detection in Infrared Imagery

机译:红外图像目标检测的统计模型

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摘要

This paper illustrates a statistical model-based approach to the problem of target detection in a cluttered scene from long-wave infrared images, accommodating both unknown range to the target, unknown target location in the image, and unknown gain control settings on the imaging device. The philosophical perspective adopted emphasizes an iterative process of model creation and refinement and subsequent evaluation. The overarching theme is on the clear statement of all assumptions regarding the relationships between ground truth and corresponding imagery, the assurance that each admits quantifiable refutation, and the opportunity costs associated with their adoption for a particular problem.
机译:本文说明了一种基于统计模型的方法,该方法可解决长波红外图像在杂乱场景中的目标检测问题,该问题可同时满足目标的未知范围,图像中未知的目标位置以及成像设备上的未知增益控制设置。所采用的哲学观点强调了模型创建,完善和后续评估的迭代过程。最重要的主题是明确陈述所有有关地面真相与相应图像之间关系的假设,保证每个人都接受可量化的驳斥,以及采用特定问题所产生的机会成本。

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