人机共享操作的语义注视标记

Reuben M. Aronson, H. Admoni
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引用次数: 9

摘要

人机协作系统从识别人的意图中受益。这种能力对于协作操作应用程序特别有用,在协作操作应用程序中,用户操作机械臂来操作对象。对于协作操作,系统可以通过跟踪眼睛注视和识别场景中特定物体的注视来确定用户的意图(即语义注视标记)。将2D固定位置(来自眼动仪)转换为3D固定位置(在现实世界中)是一项技术挑战。一种方法是将每次固定分配给离它最近的对象。然而,校准漂移、头部运动和实际交互所需的额外尺寸使得这种位置匹配方法不准确。在这项工作中,我们引入速度特征,比较后续凝视注视和有限已知点之间的相对运动,并为其中一个已知点指定注视位置。我们在合成数据上验证了我们的方法,以证明使用速度特征进行分类比位置匹配方法更稳健。此外,我们还展示了使用速度特征的分类器可以改善人机辅助操作交互的真实数据集上的语义标记。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic gaze labeling for human-robot shared manipulation
Human-robot collaboration systems benefit from recognizing people's intentions. This capability is especially useful for collaborative manipulation applications, in which users operate robot arms to manipulate objects. For collaborative manipulation, systems can determine users' intentions by tracking eye gaze and identifying gaze fixations on particular objects in the scene (i.e., semantic gaze labeling). Translating 2D fixation locations (from eye trackers) into 3D fixation locations (in the real world) is a technical challenge. One approach is to assign each fixation to the object closest to it. However, calibration drift, head motion, and the extra dimension required for real-world interactions make this position matching approach inaccurate. In this work, we introduce velocity features that compare the relative motion between subsequent gaze fixations and a finite set of known points and assign fixation position to one of those known points. We validate our approach on synthetic data to demonstrate that classifying using velocity features is more robust than a position matching approach. In addition, we show that a classifier using velocity features improves semantic labeling on a real-world dataset of human-robot assistive manipulation interactions.
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