复杂场景下基于神经网络的自主室内寻路

V. Vasudevan, Guojun Yang, J. Saniie
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引用次数: 1

摘要

由于视觉障碍、未知环境等不同原因,在室内导航到特定目的地可能是一项挑战。为了解决这个问题,人们已经做了很多工作,比如室内定位系统、使用传感器的导航,甚至使用机器人向导。在本文中,提出了一种新颖而直接的路径规划方法(包括对象回避),作为在复杂环境中导航到所需位置的方法。该系统利用RGB-D相机的深度信息和基于神经网络的目标识别技术的目标信息相结合,实时有效地计算和规划路径,到达预定的目的地。使用目标检测来识别需要帮助的人,并计算到期望目的地的最实用路径。路径信息将以合适的界面形式,如可视、音频等,发送到受助人的手持设备上。该系统的监视类型性质使其能够帮助同一地区的多人。该模型在一个受控的环境中进行测试,其中一个人被引导到附近的指定地点。虽然测试显示出有希望的结果,但目前的系统尚未得出强有力的结论。
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Autonomous Indoor Pathfinding Using Neural Network in Complex Scenes
Navigation to a specific destination indoors can be a challenge due to different reasons such as visual impairment, unknown environments, etc. There has been much work done to solve this issue such as indoor positioning systems, navigation using sensors and even using a robotic guide. In this paper, a novel and straightforward method of path planning (including object avoidance) is presented as a way of navigating to a desired location within a complex environment. The system proposed uses the combination of depth information from an RGB-D camera and the object information from a Neural Network based object identification technique, to efficiently calculate and plan a path in real-time, to a pre-specified destination. Persons to be helped are identified using object detection, and the most practical path to the desired destination is calculated. The path information would be sent to the handheld device of the person being helped in the suitable form of interface, such as visual, audio, etc. The surveillance type nature of the system enables it to help multiple persons in the same area. The model was tested in a controlled environment with one individual person being guided to nearby specified locations. While the testing showed promising results, strong conclusions are yet to be made with the current system.
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