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Simultaneous active/passive IR vehicle detection

机译:主动/被动红外车辆同时检测

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Abstract: The use of a range/passive-IR histogram as an approach to pixel-level fusion for cued target detection is discussed. Target detection algorithms for laser radar range imagery often use a number of computationally-intensive operations to locate targets in an image. These steps may include performing global geometric transforms, locating the ground plane, or applying size filters with associated rules. Each pixel in the image is processed multiple times, a time- consuming chore. An alternative to examining every pixel is to cue such detailed algorithms directly to an image location which is likely to contain a target. Cueing reduces the burden of searching or processing the entire image for regions of interest, greatly decreasing the number of computations needed for target detection. Cueing can be accomplished by combining registered laser radar range and passive-IR data. Since these data are taken simultaneously and are co-registered by Lincoln Laboratory's airborne laser radar, it is possible to combine them to form a powerful set of discriminants. There are two possible approaches to fusing the range and passive-IR data: (1) the domains can be processed for detections in two parallel streams and the resulting detection maps combined, or (2) the domains can be fused first and then processed as a single stream for detections. In the first method, sometimes called 'image-level' fusion, the processing algorithm for each domain can be optimized to obtain the best combination of detection and false alarm statistics. In the second method, the domains are combined at the pixel level, and the result is processed directly for target detection. The latter approach also reduces the number of computations since only data of interest to both domains is processed further. In this article, the multi-dimensional laser radar sensor and ongoing efforts to develop an automatic target recognition (ATR) system are described. The processing of pixel-registered laser radar range and passive-IR imagery for cued target detection using the range/passive-IR histogram is discussed. The authors present results for IR imagery with positive passive-IR target-to-background contrast to study the performance of the algorithm in real-world scenarios. These results are compared with a more typical detection method.!
机译:摘要:讨论了使用范围/被动红外直方图作为线索级目标检测的像素级融合方法。激光雷达测距图像的目标检测算法通常使用大量计算密集型操作来定位图像中的目标。这些步骤可能包括执行全局几何变换,定位地平面或应用具有关联规则的尺寸过滤器。图像中的每个像素都经过多次处理,这很耗时。检查每个像素的一种替代方法是直接将此类详细算法提示到可能包含目标的图像位置。提示减轻了搜索或处理整个图像中感兴趣区域的负担,从而大大减少了目标检测所需的计算量。可以通过结合注册的激光雷达测距和无源红外数据来完成提示。由于这些数据是同时采集的,并且是由林肯实验室的机载激光雷达共同注册的,因此有可能将它们组合以形成一组有力的判别式。有两种可能的方法可以将距离和被动IR数据融合在一起:(1)可以对两个并行流中的检测域进行处理,并将得到的检测图进行合并,或者(2)可以首先对域进行融合,然后按如下方式进行处理:单个检测流。在第一种方法(有时称为“图像级”融合)中,可以优化每个域的处理算法,以获得检测和错误警报统计信息的最佳组合。在第二种方法中,将域合并到像素级别,然后直接处理结果以进行目标检测。后一种方法还减少了计算数量,因为仅进一步处理了两个域都感兴趣的数据。在本文中,描述了多维激光雷达传感器以及开发自动目标识别(ATR)系统的持续努力。讨论了使用距离/被动红外直方图对像素注册的激光雷达测距和被动红外图像进行处理,以进行线索目标检测。作者介绍了具有正被动红外目标与背景对比度的红外图像结果,以研究该算法在实际场景中的性能。将这些结果与更典型的检测方法进行比较。

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