论文标题
使用RGB数据的移动机器人,基于无标记的深度学习的6度自由度触发
A Markerless Deep Learning-based 6 Degrees of Freedom PoseEstimation for with Mobile Robots using RGB Data
论文作者
论文摘要
增强现实由于能够增强人类机器互动和理解的能力而受到行业内各种整合工作的影响。神经网络在计算机视觉领域取得了显着的结果,这些领域具有巨大的潜力,可以帮助和促进增强的增强现实体验。但是,大多数神经网络在计算密集程度上是密集的,因此需求巨大的处理能力不适合在增强现实设备上部署。在这项工作中,我们提出了一种用于实时的艺术神经网络状态的方法3D对象在增强现实设备上定位。结果,我们提供了一种使用移动机器人系统校准AR设备的更自动化的方法。为了加速校准过程并增强用户体验,我们专注于快速的2D检测方法,这些方法仅使用2D输入即可快速,准确地提取对象的3D姿势。结果将实现为直观机器人控制和传感器数据可视化的增强现实应用程序。对于2D图像的6D注释,我们开发了一个注释工具,据我们所知,这是第一个可用的开源工具。我们取得了可行的结果,这些结果通常适用于任何AR设备,从而使这项工作有望进一步研究,以将高要求的神经网络与物联网设备相结合。
Augmented Reality has been subject to various integration efforts within industries due to its ability to enhance human machine interaction and understanding. Neural networks have achieved remarkable results in areas of computer vision, which bear great potential to assist and facilitate an enhanced Augmented Reality experience. However, most neural networks are computationally intensive and demand huge processing power thus, are not suitable for deployment on Augmented Reality devices. In this work we propose a method to deploy state of the art neural networks for real time 3D object localization on augmented reality devices. As a result, we provide a more automated method of calibrating the AR devices with mobile robotic systems. To accelerate the calibration process and enhance user experience, we focus on fast 2D detection approaches which are extracting the 3D pose of the object fast and accurately by using only 2D input. The results are implemented into an Augmented Reality application for intuitive robot control and sensor data visualization. For the 6D annotation of 2D images, we developed an annotation tool, which is, to our knowledge, the first open source tool to be available. We achieve feasible results which are generally applicable to any AR device thus making this work promising for further research in combining high demanding neural networks with Internet of Things devices.