论文标题

基于视觉的环境感知自动驾驶

Vision-Based Environmental Perception for Autonomous Driving

论文作者

Liu, Fei, Lu, Zihao, Lin, Xianke

论文摘要

视觉感知在自主驾驶中起着重要作用。主要任务之一是对象检测和识别。由于视觉传感器富含颜色和纹理信息,因此可以快速准确地确定各种道路信息。常用的技术基于提取和计算图像的各种特征。基于深度学习的方法的最新发展具有更好的可靠性和处理速度,并且在识别复杂元素方面具有更大的优势。为了进行深度估计,视觉传感器由于尺寸较小和成本较低而用于范围。单眼摄像机从单个角度使用图像数据作为输入来估计对象深度。相比之下,立体声视觉基于视差和不同视图的匹配特征点,深度学习的应用也进一步提高了准确性。此外,同时位置和映射(SLAM)可以建立道路环境的模型,从而帮助车辆感知周围环境并完成任务。在本文中,我们介绍和比较了对象检测和识别的各种方法,然后解释深度估计的开发,并根据单眼,立体声和RDBG传感器进行比较的各种方法,下一个综述并比较各种SLAM方法,并最终汇总当前问题,并介绍视觉技术的未来发展趋势。

Visual perception plays an important role in autonomous driving. One of the primary tasks is object detection and identification. Since the vision sensor is rich in color and texture information, it can quickly and accurately identify various road information. The commonly used technique is based on extracting and calculating various features of the image. The recent development of deep learning-based method has better reliability and processing speed and has a greater advantage in recognizing complex elements. For depth estimation, vision sensor is also used for ranging due to their small size and low cost. Monocular camera uses image data from a single viewpoint as input to estimate object depth. In contrast, stereo vision is based on parallax and matching feature points of different views, and the application of deep learning also further improves the accuracy. In addition, Simultaneous Location and Mapping (SLAM) can establish a model of the road environment, thus helping the vehicle perceive the surrounding environment and complete the tasks. In this paper, we introduce and compare various methods of object detection and identification, then explain the development of depth estimation and compare various methods based on monocular, stereo, and RDBG sensors, next review and compare various methods of SLAM, and finally summarize the current problems and present the future development trends of vision technologies.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源