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Feature Based Target Classification in Laser Radar

机译:激光雷达中基于特征的目标分类

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摘要

Numerous feature detectors have been defined for detecting military vehicles in natural scenes. These features can be computed for a given image chip containing a known target and used to train a classifier. This classifier can then be used to assign a label to an un-labeled image chip. The performance of the classifier is dependent on the quality of the set of features used. In this paper, we first describe a set of features commonly used by the Automatic Target Recognition (ATR) community. We men analyze feature performance on a vehicle identification task in laser radar (LADAR) imagery. Our features are computed over both the range and reflectance channels. In addition, we perform feature subset selection using two different methods and compare the results. The goal of this analysis is to determine which subset of features to choose in order to optimize performance in LADAR Autonomous Target Acquisition (ATA).
机译:已经定义了许多特征检测器,用于检测自然场景中的军用车辆。这些特征可以针对包含已知目标的给定图像芯片进行计算,并用于训练分类器。然后可以使用该分类器将标签分配给未标记的图像芯片。分类器的性能取决于所使用功能集的质量。在本文中,我们首先描述了自动目标识别(ATR)社区常用的一组功能。我们在激光雷达(LADAR)图像中分析车辆识别任务中的特征性能。我们的特征是在范围和反射率通道上计算的。此外,我们使用两种不同的方法执行特征子集选择并比较结果。该分析的目标是确定要选择哪些功能子集,以优化LADAR自主目标采集(ATA)的性能。

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