基于传感器融合和深度神经网络的智能电动拖拉机运动控制障碍检测

Vineet Kumar Pant, Amitabh Das, M. R. Agrewale, Y. Bhateshvar, K. Vora
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引用次数: 1

摘要

从安全的角度来看,现代智能/自动驾驶汽车对障碍物检测的需求是必不可少的。在农业设备中实施这种技术可以进一步提高农业的效率。这就需要一种低成本、可靠的障碍物检测和运动控制方法。为了满足需求,本研究工作的重点是开发一个使用多个传感器的感知模块,这些传感器可以在给定的场景中协调工作。为了检测障碍物,使用了三种不同的传感器,提供障碍物的距离和特征。该摄像机采用OpenCV深度神经网络进行目标检测和距离测量。由于同时测量距离相对较慢,并且依赖于与能见度有关的环境条件,因此使用了迷你激光雷达模块。由于激光雷达模块的视野有限,超声波传感器用于近距离检测障碍物。从系统中获得的数据用于驱动车辆运动的命令,使用一组执行器来控制车辆在加速,制动和转向方面的运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Obstacle Detection Using Sensor Fusion and Deep Neural Network for Motion Control of Smart Electric Tractor
The need for obstacle detection is quintessential from the safety point of view for modern smart/autonomous vehicles. The implementation of such technology in farm equipment can lead to further improvements in efficient farming. This necessitates the requirement of a low cost and reliable method for obstacle detection and motion control. To suffice the need, this research work is focused on the development of a perception module using multiple sensors which can act harmoniously in a given scenario. To detect the obstacle, three different sensors are used, providing the distance and feature of the obstacle. The camera is used for object detection and distance measurement using OpenCV deep neural network. As the simultaneous distance measurement is relatively slow and dependent on the environmental conditions pertaining to visibility, a mini Lidar module is used. As the Lidar module has a limited field of view, ultrasonic sensors are used for the detection of obstacles at close range. Data obtained from the system is used to drive commands for the vehicle's motion using a set of actuators controlling the vehicle's motion in terms of acceleration, braking and steering.
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