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Efficient Techniques for Dynamic Vehicle Detection

机译:动态车辆检测的有效技术

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摘要

Fast detection of moving vehicles is crucial for safe autonomous urban driving. We present the vehicle detection algorithm developed for our entry in the Urban Grand Challenge, an autonomous driving race organized by the U.S. Government in 2007. The algorithm provides reliable detection of moving vehicles from a high-speed moving platform using laser range finders. We present the notion of motion evidence, which allows us to overcome the low signal-to-noise ratio that arises during rapid detection of moving vehicles in noisy urban environments. We also present and evaluate an array of optimization techniques that enable accurate detection in real time. Experimental results show empirical validation on data from the most challenging situations presented at the Urban Grand Challenge as well as other urban settings.
机译:快速检测行驶中的车辆对于安全的自动城市驾驶至关重要。我们将介绍为参加“城市大挑战”而开发的车辆检测算法,该挑战是美国政府于2007年组织的自动驾驶竞赛。该算法可使用激光测距仪从高速移动平台上可靠地检测移动车辆。我们提出了运动证据的概念,这使我们能够克服在嘈杂的城市环境中快速检测行驶中的车辆时出现的低信噪比。我们还将介绍和评估一系列优化技术,这些技术可实现实时准确检测。实验结果表明,对在“城市大挑战赛”以及其他城市环境中提出的最具挑战性的情况下的数据进行了经验验证。

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