In many Asian countries with unconstrained road traffic conditions, driving violations such as not wearing helmets and triple-riding are a significant source of fatalities involving motorcycles. Identifying and penalizing such riders is vital in curbing road accidents and improving citizens' safety. With this motivation, we propose an approach for detecting, tracking, and counting motorcycle riding violations in videos taken from a vehicle-mounted dashboard camera. We employ a curriculum learning-based object detector to better tackle challenging scenarios such as occlusions. We introduce a novel trapezium-shaped object boundary representation to increase robustness and tackle the rider-motorcycle association. We also introduce an amodal regressor that generates bounding boxes for the occluded riders. Experimental results on a large-scale unconstrained driving dataset demonstrate the superiority of our approach compared to existing approaches and other ablative variants.
翻译:在许多交通条件不受限制的亚洲国家,驾驶违规现象,如不戴头盔和三驾马车等,是摩托车造成死亡的重要根源。识别和惩罚这类驾驶员对于遏制道路事故和改善公民安全至关重要。有了这一动机,我们提议了一种方法来探测、跟踪和计算从车载仪表板相机摄像机拍摄的录像中的骑摩托车违规现象。我们使用基于课程的物体探测器来更好地应对诸如隔离等具有挑战性的情景。我们引入了新型的 ⁇ 形物体边界代表,以提高稳健性,并处理骑车者-自行车协会。我们还引入了一种模式递增器,为隐蔽的骑手制造捆绑箱。大规模、无限制的驾驶数据集的实验结果显示了我们方法相对于现有方法和其他混合变体的优势。