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Concurrent localization and mapping with sonar sensors and consideration of vehicle motions.

机译:同时使用声纳传感器进行定位和制图,并考虑车辆运动。

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摘要

Simultaneous Localization and Mapping (SLAM) is a procedure used to determine the location of a mobile vehicle in an unknown environment, while constructing a map of the unknown environment at the same time. Mobile platforms, which make use of SLAM algorithms, have industrial applications in autonomous maintenance, such as the inspection of flaws and defects in oil pipelines and storage tanks. A typical SLAM consists of four main components, namely, experimental setup (data gathering), vehicle pose estimation, feature extraction, and filtering. Feature extraction is the process of realizing significant features from the unknown environment such as corners, edges, walls, and interior features. In this work, an original feature extraction algorithm specific to distance measurements obtained through SONAR sensor data is presented. This algorithm has been constructed by combining the SONAR Salient Feature Extraction Algorithm and the Triangulation Hough Based Fusion with point-in-polygon detection. The reconstructed maps obtained through simulations and experimental data with the fusion algorithm are compared to the maps obtained with existing feature extraction algorithms. Based on the results obtained, it is suggested that the proposed algorithm can be employed as an option for data obtained from SONAR sensors in environment, where other forms of sensing are not viable. The algorithm fusion for feature extraction requires the vehicle pose estimation as an input, which is obtained from a vehicle pose estimation model. For the vehicle pose estimation, the author uses sensor integration to estimate the pose of the mobile vehicle. Different combinations of these sensors are studied (e.g., encoder, gyroscope, or encoder and gyroscope). The different sensor fusion techniques for the pose estimation are experimentally studied and compared. The vehicle pose estimation model, which produces the least amount of error, is used to generate inputs for the feature extraction algorithm fusion. In the experimental studies, two different environmental configurations are used, one without interior features and another one with two interior features. Numerical and experimental findings are discussed. Finally, the SLAM algorithm is implemented along with the algorithms for feature extraction and vehicle pose estimation. Three different cases are experimentally studied, with the floor of the environment intentionally altered to induce slipping. Results obtained for implementations with and without SLAM are compared and discussed. The present work represents a step towards the realization of autonomous inspection platforms for performing concurrent localization and mapping in harsh environments.
机译:同步定位和地图绘制(SLAM)是一种用于在未知环境中同时确定未知环境地图的同时确定移动车辆位置的过程。利用SLAM算法的移动平台在自动维护方面具有工业应用,例如检查输油管道和储油罐的缺陷。典型的SLAM由四个主要组件组成,即实验设置(数据收集),车辆姿态估计,特征提取和过滤。特征提取是从未知环境中实现重要特征的过程,例如拐角,边缘,墙壁和内部特征。在这项工作中,提出了特定于通过SONAR传感器数据获得的距离测量的原始特征提取算法。该算法是通过将SONAR显着特征提取算法和基于三角剖分的基于Hough的融合与多边形中点检测相结合而构造的。将通过融合算法通过仿真和实验数据获得的重建图与通过现有特征提取算法获得的图进行比较。根据获得的结果,建议将提出的算法用作在其他形式的传感都不可行的环境中从SONAR传感器获得的数据的选项。用于特征提取的算法融合需要车辆姿态估计作为输入,这是从车辆姿态估计模型获得的。对于车辆姿态估计,作者使用传感器集成来估计移动车辆的姿态。研究了这些传感器的不同组合(例如,编码器,陀螺仪或编码器和陀螺仪)。实验研究并比较了用于姿态估计的不同传感器融合技术。产生最小误差的车辆姿态估计模型用于生成特征提取算法融合的输入。在实验研究中,使用了两种不同的环境配置,一种没有内部特征,另一种具有两种内部特征。数值和实验结果进行了讨论。最后,SLAM算法与特征提取和车辆姿态估计算法一起实现。对三种不同的情况进行了实验研究,故意改变了环境的底线以引起打滑。比较和讨论了使用SLAM和不使用SLAM的实现所获得的结果。目前的工作代表了朝着实现自动检查平台迈出的一步,该平台可以在恶劣的环境中执行并发定位和制图。

著录项

  • 作者

    Ismail, Hesham.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Robotics.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 199 p.
  • 总页数 199
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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