首页 | 官方网站   微博 | 高级检索  
相似文献
 共查询到16条相似文献,搜索用时 265 毫秒
1.
基于路径识别的移动机器人视觉导航   总被引:15,自引:0,他引:15       下载免费PDF全文
跟随路径导引是自主式移动机器人广泛采用的一种导航方式,其中视觉导航具有其他传感器导航方式所无法比拟的优点,是移动机器人智能导航的主要发展方向。为了提高移动机器人视觉导航的实时性和准确性,提出了一个基于路径识别的视觉导航系统,其基本思想是首先用基于变分辨率的采样二值化和形态学去噪方法从原始场景图像中提取出目标支持点集,然后用一种改进的哈夫变化检测出场景中的路径,最后由路径跟踪模块分直行和转弯两种情况进行导航计算。实验结果表明,该视觉导航系统具有较好的实时性和准确性。  相似文献   

2.
基于立体视觉的移动机器人导航算法   总被引:1,自引:0,他引:1  
移动机器人立体视觉系统不仅提供三维地形图用于障碍规避和路径规划,其结果还可以用于视觉导航。以移动机器人立体视觉系统为基础,研究了基于前后两个位置上立体图对的视觉测量算法用于移动机器人的连续导航,讨论了影响导航精度的因素和改进方法;研究了基于局部和全局三维地形图的地形匹配算法用于定期校正位置误差,算法实现简便,定位精度取决于地形图精度。实验结果证明了两种方法的有效性,可以兼顾近距离和中远距离导航任务。  相似文献   

3.
基于视觉的同时定位与地图构建方法综述   总被引:4,自引:1,他引:3  
基于视觉的自主导航与路径规划是移动机器人研究的关键技术,对基于视觉的计算机导航与同时定位及地图构建(SLAM)方法近三十年的发展进行了总结和展望。将视觉导航分为室内导航和室外导航,并详细阐述了每一种子类型的特点和方法。对于室内视觉导航,列举了经典导航模型和技术方法,探讨了解决SLAM问题的最新进展:HTM-SLAM算法和基于特征的算法;对室外视觉导航,阐述了国际国内目前的研究动态。  相似文献   

4.
路径规划是移动机器人的热门研究之一,是实现机器人自主导航的关键技术。针对移动机器人路径规划的算法进行研究,以了解不同条件下路径规划算法的发展与应用,系统性地总结了路径规划的研究现状和发展。针对移动机器人路径规划的特点,将其划分为智能搜索算法、基于人工智能算法、基于几何模型算法和用于局部避障算法。基于上述分类,介绍了近年来具有代表性的研究成果,重点分析各类规划算法的优缺点,对移动机器人路径规划的未来发展趋势进行展望,为移动机器人路径规划研究提供一定的思路。  相似文献   

5.
路径规划算法是实现移动机器人自主导航的关键技术。针对移动机器人路径规划技术进行研究,分析各算法的实现机制与原理,并系统性的总结了主流路径规划算法研究现状。根据移动机器人路径规划算法的特点,将路径规划算法分为:传统规划算法、智能规划算法、基于采样的规划算法。基于以上分类,分述近年来的主要研究成果,重点分析各类算法的优缺点。针对移动机器人路径规划算法研究现状,对其未来研究方向进行展望,为移动机器人路径规划大发展提供一定的思路。  相似文献   

6.
拥有自主导航能力的移动机器人在救灾、家政等人类生活中使用得愈加广泛。单目视觉导航算法作为机器人视觉导航中的一种,具有成本低、距离不受限的优势,但仍存在尺度不确定性和初始化问题。该综述根据对移动机器人的运动性质研究,主要从障碍检测、空间定位、路径规划三个方面对单目视觉导航技术进行了模块化分析,并以单目视觉导航算法的关键技术迭代与发展为脉络,对各模块的典型算法进行分析,从速度、准确性、鲁棒性等方面对不同算法进行综合性评比,并对算法存在的主要问题与难点进行剖析,结合人类对移动机器人能力的需求和移动机器人的技术状态对单目视觉导航技术的未来发展趋势进行预测。  相似文献   

7.
针对移动机器人自主导航系统,采用C++语言设计了一款基于Qt的跨平台实时数据可视化上位机软件;该软件执行SLAM技术和路径规划算法,实现可视化移动机器人建图与导航过程以及实时读取数据参数等功能;首先介绍移动机器人的硬件结构和功能;其次给出了自主导航所运用到的改进RRT*算法和动态窗口法;在详细叙述上位机软件工作流程的基础上,开发和设计了实时话题显示、读取以及界面可视化等功能;最后基于ROS系统完成移动机器人自主导航功能,并通过实时地图与数据可视化来验证所设计上位机软件功能的有效性。  相似文献   

8.
基于多传感器信息融合的移动机器人导航综述   总被引:3,自引:0,他引:3  
综述了自主式移动机器人导航技术,对其中的同步定位与地图创建、路径规划以及多传感器信息融合等技术进行了详细的分析,并从基于地图、基于环境和基于行为3个方面全面地阐述了移动机器人路径规划技术的研究现状.对当前的研究热点SLAM技术、遗传算法和基于行为的规划算法等进行了较为详细的介绍和分析.同时,展望了移动机器人导航技术的发展趋势.  相似文献   

9.
介绍了多传感器信息融合的基本原理,给出了基于多传感器信息融合的移动机器人导航系统结构。建立了移动机器人数学模型,运用基于扩展卡尔曼滤波的信息融合方法实现了移动机器人导航算法。通过实验验证了基于多传感器信息融合的移动机器人导航系统和导航算法的有效性。  相似文献   

10.
智能移动机器人技术现状及展望   总被引:12,自引:1,他引:12  
智能移动机器人技术涉及到机器人导航与定位,路径规划,运动控制等.本文综述了移动机器人技术的历史,现状以及未来.首先简要回顾了移动机器人的发展历史,介绍了移动机器人主要体系结构.其次详细论述了移动机器人的主要导航技术,路径规划技术以及多传感器信息融合技术,并指出它们优缺点.最后指出基于硬件电路图像处理的视觉导航技术,高智能情感移动机器人等技术是移动机器人发展趋势.  相似文献   

11.
This paper describes how soft computing methodologies such as fuzzy logic, genetic algorithms and the Dempster–Shafer theory of evidence can be applied in a mobile robot navigation system. The navigation system that is considered has three navigation subsystems. The lower-level subsystem deals with the control of linear and angular volocities using a multivariable PI controller described with a full matrix. The position control of the mobile robot is at a medium level and is nonlinear. The nonlinear control design is implemented by a backstepping algorithm whose parameters are adjusted by a genetic algorithm. We propose a new extension of the controller mentioned, in order to rapidly decrease the control torques needed to achieve the desired position and orientation of the mobile robot. The high-level subsystem uses fuzzy logic and the Dempster–Shafer evidence theory to design a fusion of sensor data, map building, and path planning tasks. The fuzzy/evidence navigation based on the building of a local map, represented as an occupancy grid, with the time update is proven to be suitable for real-time applications. The path planning algorithm is based on a modified potential field method. In this algorithm, the fuzzy rules for selecting the relevant obstacles for robot motion are introduced. Also, suitable steps are taken to pull the robot out of the local minima. Particular attention is paid to detection of the robot’s trapped state and its avoidance. One of the main issues in this paper is to reduce the complexity of planning algorithms and minimize the cost of the search. The performance of the proposed system is investigated using a dynamic model of a mobile robot. Simulation results show a good quality of position tracking capabilities and obstacle avoidance behavior of the mobile robot.  相似文献   

12.
Vision and navigation for the Carnegie-Mellon Navlab   总被引:7,自引:0,他引:7  
A distributed architecture articulated around the CODGER (communication database with geometric reasoning) knowledge database is described for a mobile robot system that includes both perception and navigation tools. Results are described for vision and navigation tests using a mobile testbed that integrates perception and navigation capabilities that are based on two types of vision algorithms: color vision for road following, and 3-D vision for obstacle detection and avoidance. The perception modules are integrated into a system that allows the vehicle to drive continuously in an actual outdoor environment. The resulting system is able to navigate continuously on roads while avoiding obstacles  相似文献   

13.
Monocular Vision for Mobile Robot Localization and Autonomous Navigation   总被引:5,自引:0,他引:5  
This paper presents a new real-time localization system for a mobile robot. We show that autonomous navigation is possible in outdoor situation with the use of a single camera and natural landmarks. To do that, we use a three step approach. In a learning step, the robot is manually guided on a path and a video sequence is recorded with a front looking camera. Then a structure from motion algorithm is used to build a 3D map from this learning sequence. Finally in the navigation step, the robot uses this map to compute its localization in real-time and it follows the learning path or a slightly different path if desired. The vision algorithms used for map building and localization are first detailed. Then a large part of the paper is dedicated to the experimental evaluation of the accuracy and robustness of our algorithms based on experimental data collected during two years in various environments.  相似文献   

14.
Most conventional motion planning algorithms that are based on the model of the environment cannot perform well when dealing with the navigation problem for real-world mobile robots where the environment is unknown and can change dynamically. In this paper, a layered goal-oriented motion planning strategy using fuzzy logic is developed for a mobile robot navigating in an unknown environment. The information about the global goal and the long-range sensory data are used by the first layer of the planner to produce an intermediate goal, referred to as the way-point, that gives a favorable direction in terms of seeking the goal within the detected area. The second layer of the planner takes this way-point as a subgoal and, using short-range sensory data, guides the robot to reach the subgoal while avoiding collisions. The resulting path, connecting an initial point to a goal position, is similar to the path produced by the visibility graph motion planning method, but in this approach there is no assumption about the environment. Due to its simplicity and capability for real-time implementation, fuzzy logic has been used for the proposed motion planning strategy. The resulting navigation system is implemented on a real mobile robot, Koala, and tested in various environments. Experimental results are presented which demonstrate the effectiveness of the proposed fuzzy navigation system.  相似文献   

15.
In this study, a wheeled mobile robot navigation toolbox for Matlab is presented. The toolbox includes algorithms for 3D map design, static and dynamic path planning, point stabilization, localization, gap detection and collision avoidance. One can use the toolbox as a test platform for developing custom mobile robot navigation algorithms. The toolbox allows users to insert/remove obstacles to/from the robot’s workspace, upload/save a customized map and configure simulation parameters such as robot size, virtual sensor position, Kalman filter parameters for localization, speed controller and collision avoidance settings. It is possible to simulate data from a virtual laser imaging detection and ranging (LIDAR) sensor providing a map of the mobile robot’s immediate surroundings. Differential drive forward kinematic equations and extended Kalman filter (EKF) based localization scheme is used to determine where the robot will be located at each simulation step. The LIDAR data and the navigation process are visualized on the developed virtual reality interface. During the navigation of the robot, gap detection, dynamic path planning, collision avoidance and point stabilization procedures are implemented. Simulation results prove the efficacy of the algorithms implemented in the toolbox.  相似文献   

16.
基于单目视觉的移动机器人导航算法研究进展   总被引:5,自引:0,他引:5  
基于单目视觉的移动机器人导航的研究,涵盖了机器视觉、模式识别和多目标跟踪多个领域.其算法框架不仅成功应用于移动机器人导航,还为目标检测、识别与跟踪领域的研究提供了可供参考的模型.该综述将以算法发展历史为脉络,结合一些典型系统,通过对关键技术和算法结构的分析比较,总结算法本身的发展前景和由此发展起来的可供相关研究参考的算法框架.  相似文献   

设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司    京ICP备09084417号-23

京公网安备 11010802026262号