起重机作业环境识别的无监督域自适应

Keigo Watanabe, Maierdan Maimaitimin, Yutaka Takashima, I. Nagai
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引用次数: 0

摘要

在直升机或起重机装载作业中,机体自身对环境进行识别,为了开发判断人的命令和操作是否安全的系统,需要利用传感器实现对环境的语义识别、对障碍物的距离识别以及对运动物体的高精度分类和追踪。提出了一种基于多任务深度神经网络的相机图像语义分割、深度估计和光流同时实现的方法,该方法考虑了无人机在空中的姿态和速度,并在模拟环境中得到了验证。但是请注意,在模拟环境中学习到的模型并不适用于现实世界中的环境识别。因此,本文旨在通过对抗性学习进行领域自适应,开发一种可用于现实世界的环境识别系统。通过对起重机臂架尖端的实际图像进行环境识别,验证了领域自适应技术在多任务深度神经网络中的有效性。
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Unsupervised Domain Adaptation for Environmental Recognition in Crane Operations
In loading work with a helicopter or a crane, the body itself recognizes an environment, and in order to develop a system that judges whether the commands and operations by human are safe, it needs to realize semantic recognition of the environment, distance recognition to an obstacle, and classification and pursuit of moving objects with high precision using sensors. A method of realizing semantic segmentation, depth estimation and optical flow simultaneously from a camera image had been proposed with a multitasking DNN that took account of the posture and speed of a drone considering a loading work in the air, and it was proved to be useful in a simulated environment. Note however that the model learned in the simulation environment is not a thing suitable for the environmental recognition in a real world. Therefore, this paper aims to develop an environmental recognition system that can be used in the real world by conducting a domain adaptation with adversarial learning. The usefulness of the domain adaptation technique in the proposed multitasking DNN is verified by carrying out environmental recognition of the actual image acquired from the boom tip of a crane.
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