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Laser intensity-based obstacle detection and tracking.

机译:基于激光强度的障碍物检测和跟踪。

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One of the major challenges in designing intelligent vehicles capable of autonomous travel on highways is reliable obstacle detection. Highways present an unknown and dynamic environment with real-time constraints. In addition, the high speeds of travel force a system to detect objects at long ranges. Because of its necessity for mobile robot platforms and intelligent vehicles, there has been a great amount of research devoted to the obstacle detection problem. Although there are a number of methods that can successfully detect moving vehicles, the more difficult problem of detecting animals or small, static road debris such as tires, boxes, or crates remains unsolved.; Laser range scanners, or ladars, have been used for many years for obstacle detection. Laser scanners operate by sweeping a laser across a scene and at each angle, measuring the range and returned intensity. Past researchers have ignored the intensity signal while focusing on the range returned from the laser, since the range provides direct 3-D information useful for mapping. In this thesis, I demonstrate how laser intensity alone can be used to detect and track obstacles.; Laser intensity provides different information from ordinary video data since lighting and viewing directions are coincident. At long ranges and grazing angles, vertical obstacles reflect significantly more laser energy than the horizontal road. The obstacle detection system uses a high-performance laser scanner which provides fast single-line laser scans. Histogram analysis on the returned intensity signal is used to select obstacle candidates. After candidates are matched and merged with candidates from previous scans, the range to each obstacle is estimated by a novel intensity and position tracking method.; To help better understand laser reflectance characteristics, I present a new laser reflectance model which provides good results for a wide variety of object surfaces. The reflectance model is based on experimental results and a combination of two popular reflectance theories from the computer graphics and computer vision literature. I also discuss road and system geometry in detail, since geometry affects the obstacle detection problem significantly.
机译:设计能够在高速公路上自动行驶的智能车辆的主要挑战之一是可靠的障碍物检测。高速公路呈现出具有实时约束的未知动态环境。另外,高的行驶速度迫使系统检测远距离的物体。由于其对于移动机器人平台和智能车辆的必要性,因此针对障碍物检测问题进行了大量研究。尽管有许多方法可以成功地检测出行驶中的车辆,但仍未解决检测动物或小的静态道路碎片(如轮胎,盒子或板条箱)的难题。激光测距仪或激光雷达已经用于障碍物检测已有多年了。激光扫描仪的工作原理是在整个场景中以每个角度扫掠激光,测量范围和返回强度。过去的研究人员在关注激光返回的范围时忽略了强度信号,因为该范围提供了可用于映射的直接3D信息。在本文中,我演示了如何单独使用激光强度来检测和跟踪障碍物。激光强度提供与普通视频数据不同的信息,因为照明和观看方向是一致的。在远距离和掠射角度下,垂直障碍物反射的激光能量明显大于水平道路。障碍物检测系统使用高性能的激光扫描仪,可提供快速的单线激光扫描。对返回的强度信号的直方图分析用于选择候选障碍物。在匹配候选者并将其与先前扫描的候选者合并之后,通过一种新颖的强度和位置跟踪方法来估计到每个障碍物的距离。为了帮助更好地理解激光反射率特性,我提出了一个新的激光反射率模型,该模型可为各种物体表面提供良好的结果。反射率模型基于实验结果,并结合了来自计算机图形学和计算机视觉文献的两种流行的反射率理论。我还将详细讨论道路和系统的几何形状,因为几何形状会严重影响障碍物检测问题。

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