Object Detection for Autonomous Vehicle with LiDAR Using Deep Learning

M. Yahya, S. A. Rahman, S. Mutalib
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引用次数: 6

Abstract

This paper presents an object detection for Autonomous Vehicle (AV) using deep learning algorithm. Currently, most AVs use the camera for visualization to detect surrounding objects. However, the performance of a sensor, such as a camera with visual perception, is diminished in dim light, for instance at night-time due to the less light environment. Thus, the study attempts to employ the Light Detection and Ranging (LiDAR) sensor that uses light in the form of a pulsed laser to calculate ranges and ultimately detect objects. The use of LiDAR with the recent deep learning algorithm, namely You Only Look Once (YOLO) v2, was simulated on the Robot Operating System (ROS) in the Linux environment. The collected data has undergone several filtering processes, which includes noise removal, downsampling, and transformation. The study then applies the model on real-time data from the LiDAR sensor to perform object detection. The results show that YOLOv2 can identify the objects better compared to Single Shot Detection (SSD) algorithm.
基于深度学习的激光雷达自动驾驶车辆目标检测
提出了一种基于深度学习算法的自动驾驶汽车目标检测方法。目前,大多数自动驾驶汽车使用摄像头来可视化检测周围的物体。然而,传感器的性能,如具有视觉感知的相机,在昏暗的光线下会下降,例如在夜间,由于光线较少的环境。因此,该研究试图采用光探测和测距(LiDAR)传感器,该传感器使用脉冲激光形式的光来计算距离并最终检测物体。在Linux环境下的机器人操作系统(ROS)上,对激光雷达与最新深度学习算法(即You Only Look Once (YOLO) v2)的使用进行了模拟。采集到的数据经过多次滤波处理,包括去噪、下采样和变换。然后,该研究将该模型应用于激光雷达传感器的实时数据,以执行目标检测。结果表明,与单镜头检测(Single Shot Detection, SSD)算法相比,YOLOv2算法可以更好地识别目标。
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