Replacing the human driver: An objective benchmark for occluded pedestrian detection

Shane Gilroy , Darragh Mullins , Ashkan Parsi , Edward Jones , Martin Glavin
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引用次数: 1

Abstract

Early detection of vulnerable road users is a crucial requirement for autonomous vehicles to meet and exceed the object detection capabilities of human drivers. One of the most complex outstanding challenges is that of partial occlusion where a target object is only partially available to the sensor due to obstruction by another foreground object. A number of leading pedestrian detection benchmarks provide annotation for partial occlusion, however each benchmark varies greatly in their definition of the occurrence and severity of occlusion. Research demonstrates that a high degree of subjectivity is used to classify occlusion level in these cases and occlusion is typically categorized into 2–3 broad categories such as “partially” and “heavily” occluded. In addition, many pedestrian instances are impacted by multiple inhibiting factors which contribute to non-detection such as object scale, distance from camera, lighting variations and adverse weather. This can lead to inaccurate or inconsistent reporting of detection performance for partially occluded pedestrians depending on which benchmark is used. This research introduces a novel, objective benchmark for partially occluded pedestrian detection to facilitate the objective characterization of pedestrian detection models. Characterization is carried out on seven popular pedestrian detection models for a range of occlusion levels from 0%–99% to demonstrate the impact of progressive levels of partial occlusion on pedestrian detectability. Results show that the proposed benchmark provides more objective, fine grained analysis of pedestrian detection algorithms than the current state of the art.

取代人类驾驶员:遮挡行人检测的客观基准
早期检测弱势道路使用者是自动驾驶汽车满足并超越人类驾驶员物体检测能力的关键要求。最复杂的突出挑战之一是部分遮挡,其中目标对象由于被另一个前景对象阻挡而仅部分可用于传感器。许多领先的行人检测基准为部分遮挡提供了注释,但每个基准对遮挡的发生和严重程度的定义差异很大。研究表明,在这些情况下,使用高度的主观性来分类闭塞程度,闭塞通常分为2-3大类,如“部分”和“严重”闭塞。此外,许多行人实例受到多种抑制因素的影响,这些因素导致无法检测,如物体尺度、与摄像机的距离、照明变化和恶劣天气。根据使用的基准,这可能导致部分遮挡行人的检测性能报告不准确或不一致。本研究引入了一种新的、客观的部分遮挡行人检测基准,以促进行人检测模型的客观表征。在0%-99%的遮挡水平范围内,对七个流行的行人检测模型进行了表征,以证明部分遮挡的渐进水平对行人检测能力的影响。结果表明,与现有技术相比,所提出的基准对行人检测算法提供了更客观、更细粒度的分析。
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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CiteScore
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