杂草丛生的人:行人检测越野

Trenton Tabor, Zachary A. Pezzementi, Carlos Vallespí, Carl K. Wellington
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引用次数: 8

摘要

机器人技术为提高效率和提高安全性提供了一个很好的机会,但在越野环境中可靠地检测人类仍然是一个关键挑战。我们在越野环境中对自动拖拉机收集的数据集进行了人身检测器评估,该数据集代表具有挑战性的条件,包括杂草和树枝的严重遮挡以及非站立姿势。我们应用了三种来自城市行人检测的纯图像算法,以更好地理解这些方法在该领域的工作效果。我们评估了文献中的聚合通道特征(ACF)和可变形部件模型(DPM)算法,以及我们自己实现的卷积神经网络(CNN)。研究表明,行人检测文献中使用的传统性能指标对参数化极为敏感。当应用于像这样的领域时,由于高背景纹理和遮挡,定位是具有挑战性的,重叠阈值的选择强烈影响测量性能。使用允许重叠阈值,我们发现ACF、DPM和CNN在该领域的总体表现相似,尽管它们各自具有不同的失效模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
People in the weeds: Pedestrian detection goes off-road
Robotics offers a great opportunity to improve efficiency while also improving safety, but reliable detection of humans in off-road environments remains a key challenge. We present a person detector evaluation on a dataset collected from an autonomous tractor in an off-road environment representing challenging conditions with significant occlusion from weeds and branches as well as non-standing poses. We apply three image-only algorithms from urban pedestrian detection to better understand how well these approaches work in this domain. We evaluate the Aggregate Channel Features (ACF) and Deformable Parts Model (DPM) algorithms from the literature, as well as our own implementation of a Convolutional Neural Network (CNN). We show that the traditional performance metric used in the pedestrian detection literature is extremely sensitive to parameterization. When applied in domains like this one, where localization is challenging due to high background texture and occlusion, the choice of overlap threshold strongly affects measured performance. Using a permissive overlap threshold, we found that ACF, DPM, and CNN perform similarly overall in this domain, although they each have different failure modes.
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