Robust detection of vulnerable road users is a safety critical requirement for the deployment of autonomous vehicles in heterogeneous traffic. 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. Recent research demonstrates that a high degree of subjectivity is used to classify occlusion level in these cases and occlusion is typically categorized into 2 to 3 broad categories such as partially and heavily occluded. This can lead to inaccurate or inconsistent reporting of pedestrian detection model performance 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%. Results demonstrate that pedestrian detection performance degrades, and the number of false negative detections increase as pedestrian occlusion level increases. Of the seven popular pedestrian detection routines characterized, CenterNet has the greatest overall performance, followed by SSDlite. RetinaNet has the lowest overall detection performance across the range of occlusion levels.
翻译:对脆弱的道路使用者进行强力探测是在不同交通中部署自主车辆安全的关键要求,最复杂的一个未决问题是部分封闭,因为由于另一个前景物体的阻力,传感器只能部分获得目标物体,因此部分封闭。一些领先的行人探测基准为部分封闭提供了说明,但每个基准在对隔离的发生和严重程度的定义方面差异很大。最近的研究表明,高度主观性被用来将这些情况中的隔离程度分类,隔离通常分为2至3大类,如部分和严重隐蔽。这可能导致对行人探测模型性能报告不准确或不一致,取决于使用基准。这一研究为部分隐蔽行人探测提供了新的客观基准,以便利对行人探测模型的客观定性。对7个受欢迎的行人探测模型进行了定位,从0-99%的封闭程度看。结果显示行人探测性表现下降,以及作为行人隔离程度提高的虚假负面检测次数。根据使用何种基准对行人探测模型进行不准确性报告。互联网七级测得最强的普通水平。