Pedestrian detection is among the most safety-critical features of driver assistance systems for autonomous vehicles. One of the most complex detection 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 current pedestrian detection benchmarks provide annotation for partial occlusion to assess algorithm performance in these scenarios, however each benchmark varies greatly in their definition of the occurrence and severity of occlusion. In addition, current occlusion level annotation methods contain a high degree of subjectivity by the human annotator. This can lead to inaccurate or inconsistent reporting of an algorithm's detection performance for partially occluded pedestrians, depending on which benchmark is used. This research presents a novel, objective method for pedestrian occlusion level classification for ground truth annotation. Occlusion level classification is achieved through the identification of visible pedestrian keypoints and through the use of a novel, effective method of 2D body surface area estimation. Experimental results demonstrate that the proposed method reflects the pixel-wise occlusion level of pedestrians in images and is effective for all forms of occlusion, including challenging edge cases such as self-occlusion, truncation and inter-occluding pedestrians.
翻译:Pedestrian探测是自动车辆驾驶辅助系统最安全的关键特征之一。最复杂的探测挑战之一是部分封闭,由于另一表面物体的阻力,传感器只能部分获得目标对象。目前一些行人探测基准为部分封闭提供了说明,以评估这些假设情景中的算法性表现,但每个基准在确定排解的发生率和严重程度方面差异很大。此外,目前的排入级别注解方法包含人体说明员高度主观性的高度。这可能导致部分隐蔽行人算法的检测性能报告不准确或不一致,这取决于使用何种基准。这一研究为行人对地面真相注解的排解等级分类提供了一个新颖、客观的方法。通过确定可见行人关键点和使用2D体表面估计的新颖有效方法,实现了排解程度分类。实验结果显示,拟议方法反映了部分隐蔽行人算的算法水平,包括具有挑战性的行人平面和行人平面的自我固度,是所有具有挑战性的行人平面和行人平面的一种有效方法。