机器人精细操作任务的四自由度跟踪

Mennatullah Siam, Abhineet Singh, Camilo Perez, Martin Jägersand
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引用次数: 3

摘要

本文介绍了基于学习的视觉跟踪和基于配准的视觉跟踪两种不同的模式,并评价了它们在基于图像的视觉伺服中的应用。它们可以用四个自由度(DoF)跟踪物体运动,正如我们将在这里展示的那样,这对于许多精细的操作任务来说已经足够了。其中一个跟踪器是新开发的基于学习的跟踪器,它依赖于学习判别相关滤波器,而另一个是对最近基于RANSAC的8 DoF跟踪器的改进,采用了新的外观模型来跟踪4 DoF运动。这两种跟踪器在操作任务的现有数据集上提供了优于几个最先进的跟踪器的性能。此外,还提出了一个具有挑战性序列的新数据集,用于从安装在机器人上的眼手相机(EIH)捕获的精细操作任务。这些序列在实际任务中遇到了各种各样的挑战,包括抖动的相机运动,运动模糊,剧烈的规模变化和部分遮挡。对这些序列的定量和定性结果表明,这两种跟踪器对故障具有鲁棒性,同时提供高精度,使其适用于此类精细操作任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
4-DoF Tracking for Robot Fine Manipulation Tasks
This paper presents two visual trackers from the different paradigms of learning and registration based tracking and evaluates their application in image based visual servoing. They can track object motion with four degrees of freedom (DoF) which, as we will show here, is sufficient for many fine manipulation tasks. One of these trackers is a newly developed learning based tracker that relies on learning discriminative correlation filters while the other is a refinement of a recent 8 DoF RANSAC based tracker adapted with a new appearance model for tracking 4 DoF motion. Both trackers are shown to provide superior performance to several state of the art trackers on an existing dataset for manipulation tasks. Further, a new dataset with challenging sequences for fine manipulation tasks captured from robot mounted eye-in-hand (EIH) cameras is also presented. These sequences have a variety of challenges encountered during real tasks including jittery camera movement, motion blur, drastic scale changes and partial occlusions. Quantitative and qualitative results on these sequences are used to show that these two trackers are robust to failures while providing high precision that makes them suitable for such fine manipulation tasks.
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