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3D scene geometry estimation method of substation inspection robot based on lightweight neural network

机译:基于轻质神经网络的变电站检查机器人场景几何估计方法

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Understanding 3D scene geometry from video is a basic subject of visual perception. It includes many classic computer vision tasks, such as depth recovery, traffic estimation, visual odometer. Recent work has proved that deep learning can be applied to scene understanding problems. But they all have some inherent limitations. For example, they need stereo cameras as additional devices for data acquisition, or can't explicitly deal with non-rigid and occlusion. The environment in the substation is complex, and there are many devices. In the working process of inspection robot, the target is very easy to be blocked, and it is difficult to deploy directly by traditional methods. In addition, the real-time performance of neural network is very important for electric inspection robot. In this paper, 3D scene geometry estimation method of substation inspection robot is proposed, which consists of two main parts: GeoNet module and pruning module. Experiments show that the proposed method can be effectively applied to electric inspection robot.
机译:了解视频的3D场景几何是视觉感知的基本主题。它包括许多经典计算机视觉任务,例如深度恢复,流量估计,视觉尺。最近的工作证明,深度学习可以应用于现场了解问题。但他们都有一些固有的局限性。例如,它们需要立体声相机作为数据采集的额外设备,或者无法明确处理非刚性和遮挡。变电站中的环境很复杂,并且有许多设备。在检查机器人的工作过程中,目标很容易被阻挡,并且很难通过传统方法直接部署。此外,神经网络的实时性能对于电动检测机器人来说非常重要。本文提出了三维场景几何估计方法,包括两个主要部件:地理仪模块和修剪模块。实验表明,所提出的方法可以有效地应用于电动检测机器人。

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