论文标题
了解闭塞行人对ML系统的边缘案件的影响
Understanding the Impact of Edge Cases from Occluded Pedestrians for ML Systems
论文作者
论文摘要
机器学习(ML)实现的方法被认为是一种实质性的支持技术,是对自动驾驶汽车交通参与者的障碍的检测和分类。在过去的几年中,已经证明了重大突破,甚至涵盖了从感官输入到感知到计划的完整端到端数据处理链,再到对加速,破坏和转向的控制。 Yolo(仅您的外观)是一种最先进的感知神经网络(NN)体系结构,可通过相机图像上的边界框估算提供对象检测和分类。由于NN经过良好的注释图像训练,因此在本文中,我们研究了在添加到测试集中的手工遮挡上测试时NN的置信水平的变化。我们将常规的行人检测与上半身检测进行比较。我们的发现表明,当全身NN的性能为0.75或更高时,仅使用部分信息的两个NN类似地表现出色。此外,正如预期的那样,仅在下半部身体进行训练的网络最不容易受到上半部遮挡的干扰,反之亦然。
Machine learning (ML)-enabled approaches are considered a substantial support technique of detection and classification of obstacles of traffic participants in self-driving vehicles. Major breakthroughs have been demonstrated the past few years, even covering complete end-to-end data processing chain from sensory inputs through perception and planning to vehicle control of acceleration, breaking and steering. YOLO (you-only-look-once) is a state-of-the-art perception neural network (NN) architecture providing object detection and classification through bounding box estimations on camera images. As the NN is trained on well annotated images, in this paper we study the variations of confidence levels from the NN when tested on hand-crafted occlusion added to a test set. We compare regular pedestrian detection to upper and lower body detection. Our findings show that the two NN using only partial information perform similarly well like the NN for the full body when the full body NN's performance is 0.75 or better. Furthermore and as expected, the network, which is only trained on the lower half body is least prone to disturbances from occlusions of the upper half and vice versa.