面向智能导航的单目云图生成

K. Vaibhav, V. Rc, Shobha K R, Harish Mm, D. S. Murthy, Lakshmi S, M. Ravikanth, Twishi Tyagi
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引用次数: 0

摘要

现有的机器人智能导航系统存在着对同步定位与测绘(SLAM)技术中使用的摄像模块或传感跟踪模块成本要求高的问题。这种系统中的传感器需要替换为能够提供深度信息的高端摄像头,这进一步增加了系统的成本。深度信息对于构建环境的3D地图以满足进一步的导航需求是必要的。这使得它对日常家庭应用无效。为了解决这个问题,提出了一个系统,可以使用现有的智能手机来执行定向FAST和旋转BRIEF-SLAM (ORB SLAM)所需的传感操作。该系统使用YOLO算法和CNN网络对常见的家庭物体进行物体检测。利用智能手机摄像头,使用ORB SLAM算法设计了具有重新定位、循环关闭和地图重用功能的点云图。通过室内序列测试,集成的机器人操作系统(ROS)提供了典型的实时性能。利用ORB SLAM可以检测目标,并创建显示和映射周围空间并探索未知环境的点云。该系统提供了一种更便宜的替代方案,无需昂贵的3D相机或深度传感器,可以使用任何单目相机,并实时执行点云映射、深度映射和目标检测等操作。
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Monocular Cloud Map Generation for Intelligent Navigation
The existing Intelligent Navigation systems for Robotic operations suffer from high-cost requirements of the camera modules or the sensory tracking modules used in the Simultaneous Localization and Mapping (SLAM) technique. The sensor in such systems needs to be replaced with high-end cameras which can provide depth information as well, which further adds to the cost of the system. The depth information is necessary to build 3D maps of the environment for further navigation requirements. This makes it ineffective for everyday in-home applications. To solve this, a system that can use available smartphones to perform sensing operations required for Oriented FAST and Rotated BRIEF-SLAM (ORB SLAM) is proposed. The proposed system performs object detection of common household objects using the YOLO algorithm along with CNN networks.Utilizing a smartphone camera, a point cloud map has been designed using the ORB SLAM algorithm with re-localization, loop closing, and map reuse features. Tested with indoor sequences, the integrated Robot Operating System (ROS) provides exemplary performance in real-time. The targets could be detected using ORB SLAM, and point clouds that display and map the surrounding spaces and explore the unknown environment were created. This system eliminates the need for expensive 3D cameras or depth sensors by providing a cheaper alternative using any monocular camera and performing operations like point cloud mapping, depth mapping, and object detection in real-time.
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