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Robot-Centric Activity Prediction from First-Person Videos: What Will They Do to Me?

机译:以第一人称视频为中心的机器人活动预测:他们将对我做什么?

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In this paper, we present a core technology to enable robot recognition of human activities during human-robot interactions. In particular, we propose a methodology for early recognition of activities from robot-centric videos (i.e., first-person videos) obtained from a robot's viewpoint during its interaction with humans. Early recognition, which is also known as activity prediction, is an ability to infer an ongoing activity at its early stage. We present an algorithm to recognize human activities targeting the camera from streaming videos, enabling the robot to predict intended activities of the interacting person as early as possible and take fast reactions to such activities (e.g., avoiding harmful events targeting itself before they actually occur). We introduce the novel concept of'onset' that efficiently summarizes pre-activity observations, and design a recognition approach to consider event history in addition to visual features from first-person videos. We propose to represent an onset using a cascade histogram of time series gradients, and we describe a novel algorithmic setup to take advantage of such onset for early recognition of activities. The experimental results clearly illustrate that the proposed concept of onset enables better/earlier recognition of human activities from first-person videos collected with a robot.
机译:在本文中,我们提出了一种核心技术,可以使机器人识别人机交互过程中的人类活动。特别是,我们提出了一种方法,用于从机器人与人互动过程中从机器人视点获得的以机器人为中心的视频(即第一人称视频)中的活动进行早期识别。早期识别(也称为活动预测)是一种在早期阶段推断正在进行的活动的能力。我们提出了一种算法,可以从流视频中识别针对摄像机的人类活动,从而使机器人能够尽早预测交互人的预期活动,并对此类活动做出快速反应(例如,避免在实际发生危害性事件之前将其作为目标) 。我们介绍了“发作”的新颖概念,该概念可以有效地总结出运动前的观察结果,并设计一种识别方法来考虑事件历史以及第一人称视频的视觉特征。我们建议使用时间序列梯度的级联直方图来表示发作,并且我们描述了一种新颖的算法设置,可以利用这种发作来早期识别活动。实验结果清楚地表明,建议的发病概念可以更好/更早地从机器人收集的第一人称视频中识别人类活动。

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