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ROBUST FEATURES FOR LEG DETECTION IN 2D LASER RANGE DATA

机译:二维激光范围数据中腿部检测的强大功能

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People detection in 2D laser range data is widely used in many application, such as robotics, smart cities or regions, and intelligent driving. For most current methods on people detection based on a single laser range finder are actually leg detectors as the sensor are always established below the knee height. Current state-of-the-art methods share similar steps including segmentation, feature extraction and a machine learning-based classification, but use different features which have good performance on their own experimental data. For researchers, it is important and desirable to know which features are more robust. In this paper, taking advantage of the fact that effective features can be selected by AdaBoost and assembled into a strong classifier, a set of features presented in state-of-the-art methods is combined with a set of features presented by us to train a leg detector by the AdaBoost algorithm. This detector is assembling by effective features and can classify segments into leg and non-leg. Three open source data sets including simple and complex scenarios are used for the experiments to test the features and extracted the important ones. To reduce the effect of segmentation on the final results, three segmentation methods are simultaneously used for experiments and analysis to ensure the reliability and credibility of our conclusion. Finally, 10 robust features for leg detection in 2D laser range data are presented based on the results.
机译:2D激光测距数据中的人员检测已广泛用于许多应用中,例如机器人技术,智慧城市或地区以及智能驾驶。对于大多数当前基于单个激光测距仪的人检测方法,实际上是腿部检测器,因为传感器始终位于膝盖高度以下。当前最先进的方法共享相似的步骤,包括分割,特征提取和基于机器学习的分类,但是使用不同的特征,这些特征在自己的实验数据上表现良好。对于研究人员而言,了解哪些功能更健壮是重要且可取的。在本文中,利用AdaBoost可以选择有效特征并将其组合为强大的分类器这一事实,将采用最新技术提供的一组特征与我们提供的一组特征结合在一起进行训练AdaBoost算法的腿部检测器。该检测器通过有效特征进行组装,可以将段分为腿和非腿。实验使用了三个包含简单场景和复杂场景的开源数据集,以测试功能并提取重要的数据集。为了减少分割对最终结果的影响,三种分割方法同时用于实验和分析,以确保我们结论的可靠性和可信性。最后,基于结果,提出了10种用于2D激光测距数据中腿部检测的强大功能。

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