TractorEYE: Vision-based Real-time Detection for Autonomous Vehicles in Agriculture

P. Christiansen
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引用次数: 1

Abstract

Agricultural vehicles such as tractors and harvesters have for decades been able to navigate automatically and more efficiently using commercially available products such as auto-steering and tractor-guidance systems. However, a human operator is still required inside the vehicle to ensure the safety of vehicle and especially surroundings such as humans and animals. To get fully autonomous vehicles certified for farming, computer vision algorithms and sensor technologies must detect obstacles with equivalent or better than human-level performance. Furthermore, detections must run in real-time to allow vehicles to actuate and avoid collision. This thesis proposes a detection system (TractorEYE), a dataset (FieldSAFE), and procedures to fuse information from multiple sensor technologies to improve detection of obstacles and to generate a map.  TractorEYE is a multi-sensor detection system for autonomous vehicles in agriculture. The multi-sensor system consists of three hardware synchronized and registered sensors (stereo camera, thermal camera and multi-beam lidar) mounted on/in a ruggedized and water-resistant casing. Algorithms have been developed to run a total of six detection algorithms (four for rgb camera, one for thermal camera and one for a Multi-beam lidar) and fuse detection information in a common format using either 3D positions or Inverse Sensor Models. A GPU powered computational platform is able to run detection algorithms online. For the rgb camera, a deep learning algorithm is proposed DeepAnomaly to perform real-time anomaly detection of distant, heavy occluded and unknown obstacles in agriculture. DeepAnomaly is -- compared to a state-of-the-art object detector Faster R-CNN -- for an agricultural use-case able to detect humans better and at longer ranges (45-90m) using a smaller memory footprint and 7.3-times faster processing. Low memory footprint and fast processing makes DeepAnomaly suitable for real-time applications running on an embedded GPU.  FieldSAFE is a multi-modal dataset for detection of static and moving obstacles in agriculture. The dataset includes synchronized recordings from a rgb camera, stereo camera, thermal camera, 360-degree camera, lidar and radar. Precise localization and pose is provided using IMU and GPS. Ground truth of static and moving obstacles (humans, mannequin dolls, barrels, buildings, vehicles, and vegetation) are available as an annotated orthophoto and GPS coordinates for moving obstacles.  Detection information from multiple detection algorithms and sensors are fused into a map using Inverse Sensor Models and occupancy grid maps.  This thesis presented many scientific contribution and state-of-the-art within perception for autonomous tractors; this includes a dataset, sensor platform, detection algorithms and procedures to perform multi-sensor fusion. Furthermore, important engineering contributions to autonomous farming vehicles are presented such as easily applicable, open-source software packages and algorithms that have been demonstrated in an end-to-end real-time detection system. The contributions of this thesis have demonstrated, addressed and solved critical issues to utilize camera-based perception systems that are essential to make autonomous vehicles in agriculture a reality.
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TractorEYE:基于视觉的农业自动驾驶车辆实时检测
几十年来,拖拉机和收割机等农用车辆已经能够使用自动转向和拖拉机制导系统等商用产品进行自动和更有效的导航。然而,车内仍然需要一名操作员来确保车辆的安全,特别是人类和动物等周围环境的安全。为了让全自动驾驶汽车获得农业认证,计算机视觉算法和传感器技术必须检测到与人类水平相当或更好的障碍物。此外,检测必须实时运行,以使车辆能够启动并避免碰撞。本文提出了一个检测系统(TractorEYE),一个数据集(FieldSAFE),以及融合来自多种传感器技术的信息的程序,以改进障碍物的检测并生成地图。TractorEYE是一个用于农业自动驾驶车辆的多传感器检测系统。多传感器系统由三个硬件同步和注册传感器(立体摄像机、热摄像机和多波束激光雷达)组成,安装在坚固的防水外壳上。算法已经开发出总共运行六种检测算法(四种用于rgb相机,一种用于热成像相机,一种用于多波束激光雷达)和使用3D位置或逆传感器模型的通用格式的引信检测信息。基于GPU的计算平台能够在线运行检测算法。针对rgb相机,提出了一种深度学习算法DeepAnomaly,对农业中遥远、重遮挡和未知障碍物进行实时异常检测。与最先进的物体探测器相比,DeepAnomaly是更快的R-CNN,用于农业用例,能够更好地检测人类,距离更远(45-90米),使用更小的内存占用和7.3倍的处理速度。低内存占用和快速处理使DeepAnomaly适合在嵌入式GPU上运行的实时应用程序。FieldSAFE是一个多模态数据集,用于检测农业中的静态和移动障碍物。数据集包括rgb相机、立体相机、热像仪、360度相机、激光雷达和雷达的同步记录。使用IMU和GPS提供精确的定位和姿态。静态和移动障碍物(人类、人体模型娃娃、木桶、建筑物、车辆和植被)的地面真实值可作为移动障碍物的注释正射影像和GPS坐标。利用逆传感器模型和占用网格图将多种检测算法和传感器的检测信息融合成地图。本文介绍了自动驾驶拖拉机的许多科学贡献和最新技术;这包括数据集、传感器平台、检测算法和执行多传感器融合的程序。此外,还介绍了对自动农用车辆的重要工程贡献,例如易于应用的开源软件包和算法,这些软件包和算法已在端到端实时检测系统中得到验证。本文的贡献已经证明,解决并解决了利用基于摄像头的感知系统的关键问题,这对于实现农业中的自动驾驶汽车至关重要。
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