Time-of-Flight Cameras in Space: Pose Estimation with Deep Learning Methodologies

Alkis Koudounas, F. Giobergia, Elena Baralis
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引用次数: 1

Abstract

Recently introduced 3D Time-of-Flight (ToF) cameras have shown a huge potential for mobile robotic applications, proposing a smart and fast technology that outputs 3D point clouds, lacking however in measurement precision and robustness. With the development of this low-cost sensing hardware, 3D perception gathers more and more importance in robotics as well as in many other fields, and object registration continues to gain momentum. Registration is a transformation estimation problem between a source and a target point clouds, seeking to find the transformation that best aligns them. This work aims at building a full pipeline, from data acquisition to transformation identification, to robustly detect known objects observed by a ToF camera within a short range, estimating their 6 degrees of freedom position. We focus this work to demonstrating the capability of detecting a part of a satellite floating in space, to support in-orbit servicing missions (e.g. for space debris removal). Experiments reveal that deep learning techniques can obtain higher accuracy and robustness w.r.t. classical methods, handling significant amount of noise while still keeping real-time performance and low complexity of the models themselves.
空间中的飞行时间相机:用深度学习方法进行姿态估计
最近推出的3D飞行时间(ToF)相机在移动机器人应用中显示出巨大的潜力,提出了一种智能和快速的技术,可以输出3D点云,但缺乏测量精度和鲁棒性。随着这种低成本传感硬件的发展,3D感知在机器人以及许多其他领域的重要性越来越大,目标配准也不断得到发展。注册是源点云和目标点云之间的转换估计问题,寻求找到最适合它们的转换。本工作旨在构建从数据采集到变换识别的完整流水线,以鲁棒检测ToF相机在近距离内观测到的已知物体,估计其6个自由度的位置。我们的工作重点是展示探测漂浮在太空中的卫星部分的能力,以支持在轨服务任务(例如清除空间碎片)。实验表明,深度学习技术可以获得比经典方法更高的精度和鲁棒性,在处理大量噪声的同时仍然保持模型本身的实时性和低复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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