Object recognition from on-the-road traffic data

S. Muhammad, Qaisar Farooq, Chen Zuguo, Yimin Zhou
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Abstract

In order to detect the object and inspect the road conditions in real-time, the 2-dimensional (2D) and 3- dimensional (3D) data obtained from the onboard sensors, LiDAR and digital cameras are analyzed for object recognition to assist driving. Due to the uncertainties of the dynamic objects, such as pedestrians, animals or vibrated vehicles, extraction of complete and clear objects from LiDARs datasets requires complex post-processing since LiDAR data can be used for scanning at long distances, i.e., 300m, which can alarm the driver timely to take necessary actions. The dynamic and static objects from the LiDARs point clouds can be detected with the teacher-student framework algorithm along with the KITTI dataset. Furthermore, a semi-supervised theory is utilized to improve detection performance.
从道路交通数据中识别物体
为了实时检测物体和检查路况,从车载传感器、激光雷达和数码相机获得的二维(2D)和三维(3D)数据被分析用于物体识别,以辅助驾驶。由于动态物体的不确定性,例如行人、动物或振动的车辆,从LiDAR数据集中提取完整清晰的物体需要复杂的后处理,因为LiDAR数据可以用于长距离扫描,例如300米,这可以及时提醒驾驶员采取必要的行动。利用师生框架算法和KITTI数据集可以检测lidar点云中的动态和静态目标。此外,利用半监督理论提高了检测性能。
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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