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首页> 外文期刊>International Journal of Advanced Robotic Systems >A review of algorithms and techniques for image-based recognition and inference in mobile robotic systems
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A review of algorithms and techniques for image-based recognition and inference in mobile robotic systems

机译:移动机器人系统中基于图像的识别与推断的算法和技术综述

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Autonomous vehicles include driverless, self-driving and robotic cars, and other platforms capable of sensing and interacting with its environment and navigating without human help. On the other hand, semiautonomous vehicles achieve partial realization of autonomy with human intervention, for example, in driver-assisted vehicles. Autonomous vehicles first interact with their surrounding using mounted sensors. Typically, visual sensors are used to acquire images, and computer vision techniques, signal processing, machine learning, and other techniques are applied to acquire, process, and extract information. The control subsystem interprets sensory information to identify appropriate navigation path to its destination and action plan to carry out tasks. Feedbacks are also elicited from the environment to improve upon its behavior. To increase sensing accuracy, autonomous vehicles are equipped with many sensors [light detection and ranging (LiDARs), infrared, sonar, inertial measurement units, etc.], as well as communication subsystem. Autonomous vehicles face several challenges such as unknown environments, blind spots (unseen views), non-line-of-sight scenarios, poor performance of sensors due to weather conditions, sensor errors, false alarms, limited energy, limited computational resources, algorithmic complexity, human–machine communications, size, and weight constraints. To tackle these problems, several algorithmic approaches have been implemented covering design of sensors, processing, control, and navigation. The review seeks to provide up-to-date information on the requirements, algorithms, and main challenges in the use of machine vision–based techniques for navigation and control in autonomous vehicles. An application using landbased vehicle as an Internet of Thing-enabled platform for pedestrian detection and tracking is also presented.
机译:自动车辆包括无人驾驶,自动驾驶和机器人车,以及能够与其环境感测和​​互动的其他平台,没有人为帮助。另一方面,半自治车辆实现了人为干预的自主权的部分实现,例如,在驾驶员辅助车辆中。自动车辆首先使用安装的传感器与其周围相互作用。通常,视觉传感器用于获取图像,计算机视觉技术,信号处理,机器学习和其他技术被应用于获取,处理和提取信息。控制子系统会解释所谓的信息,以确定其目的地的适当导航路径和执行任务的行动计划。反馈也引发了环境来改善其行为。为了提高感测精度,自动车辆配备了许多传感器[光检测和测距(Lidars),红外,声纳,惯性测量单元等],以及通信子系统。自治车辆面临多种挑战,如未知的环境,盲点(看法),非视线方案,由于天气条件,传感器错误,虚假警报,能量,有限的计算资源,算法复杂性,传感器的性能不佳。 ,人机通信,尺寸和重量约束。为了解决这些问题,已经实现了几种算法方法,涵盖了传感器,处理,控制和导航的设计。审查旨在提供关于在自动车辆中使用基于机器视觉技术的要求,算法和主要挑战的最新信息,以便在自动车辆中导航和控制。还介绍了使用陆基车辆作为一种能够的行人检测和跟踪平台互联网的应用。

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