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A General Purpose Feature Extractor for Light Detection and Ranging Data

机译:用于光检测和测距数据的通用特征提取器

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摘要

Feature extraction is a central step of processing Light Detection and Ranging (LIDAR) data. Existing detectors tend to exploit characteristics of specific environments: corners and lines from indoor (rectilinear) environments, and trees from outdoor environments. While these detectors work well in their intended environments, their performance in different environments can be poor. We describe a general purpose feature detector for both 2D and 3D LIDAR data that is applicable to virtually any environment. Our method adapts classic feature detection methods from the image processing literature, specifically the multi-scale Kanade-Tomasi corner detector. The resulting method is capable of identifying highly stable and repeatable features at a variety of spatial scales without knowledge of environment, and produces principled uncertainty estimates and corner descriptors at same time. We present results on both software simulation and standard datasets, including the 2D Victoria Park and Intel Research Center datasets, and the 3D MIT DARPA Urban Challenge dataset.
机译:特征提取是处理光检测和测距(LIDAR)数据的中心步骤。现有的检测器倾向于利用特定环境的特征:室内(直线)环境中的拐角和线条,以及室外环境中的树木。尽管这些检测器在预期的环境中可以很好地工作,但它们在不同环境中的性能可能很差。我们描述了适用于几乎所有环境的2D和3D LIDAR数据的通用特征检测器。我们的方法采用了图像处理文献中的经典特征检测方法,特别是多尺度Kanade-Tomasi拐角检测器。所得方法能够在不了解环境的情况下,在各种空间尺度上识别高度稳定和可重复的特征,并同时生成有原则的不确定性估计和拐角描述符。我们在软件仿真和标准数据集(包括2D Victoria Park和Intel研究中心数据集,以及3D MIT DARPA Urban Challenge数据集)上都提供了结果。

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