Fast 3D object matching with Projection Density Energy

O. Kechagias-Stamatis, N. Aouf
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引用次数: 5

Abstract

We present a novel real time 3D Automatic Target Recognition algorithm appropriate for LIDAR based time critical applications. Its main contribution is the Constant False Alarm Rate adaptive threshold combined with the Projection Density Energy and the transformation of the 3D problem into multiple 2Ds. Our approach is invariant to 3D rotations combined with scale change, Gaussian noise and uniform sparse representation of the target. Applied on real targets from the UWA dataset and on military targets from the Princeton shape benchmark, we obtained 90% recognition in 77ms and 97% in 106ms respectively (in Matlab). Our approach could be considered by the Defence Community as an initial step towards LIDAR based missile seekers where data is inversely proportional to the available time to perform recognition.
快速3D对象匹配与投影密度能量
我们提出了一种新的实时三维自动目标识别算法,适用于基于激光雷达的时间关键应用。它的主要贡献是结合投影密度能量和将三维问题转化为多个二维问题的恒定虚警率自适应阈值。该方法结合尺度变化、高斯噪声和目标均匀稀疏表示,对三维旋转具有不变性。应用于UWA数据集的真实目标和普林斯顿形状基准的军事目标,我们分别在77ms和106ms内获得了90%和97%的识别率(Matlab)。我们的方法可以被防务界视为迈向基于激光雷达的导弹导引头的第一步,其中数据与执行识别的可用时间成反比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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