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Action anticipation for collaborative environments: The impact of contextual information and uncertainty-based prediction

机译:合作环境的行动预期:语境信息的影响和基于不确定性的预测

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摘要

To interact with humans in collaborative environments, machines need to be able to predict (i.e., anticipate) future events, and execute actions in a timely manner. However, the observation of the human limb movements may not be sufficient to anticipate their actions unambiguously. In this work, we consider two additional sources of information (i.e., context) over time, gaze, movement and object information, and study how these additional contextual cues improve the action anticipation performance. We address action anticipation as a classification task, where the model takes the available information as the input and predicts the most likely action. We propose to use the uncertainty about each prediction as an online decision-making criterion for action anticipation. Uncertainty is modeled as a stochastic process applied to a time-based neural network architecture, which improves the conventional class-likelihood (i.e., deterministic) criterion. The main contributions of this paper are fourfold: (i) We propose a novel and effective decision-making criterion that can be used to anticipate actions even in situations of high ambiguity; (ii) we propose a deep architecture that outperforms previous results in the action anticipation task when using the Acticipate collaborative dataset; (iii) we show that contextual information is important to disambiguate the interpretation of similar actions; and (iv) we also provide a formal description of three existing performance metrics that can be easily used to evaluate action anticipation models.Our results on the Acticipate dataset showed the importance of contextual information and the uncertainty criterion for action anticipation. We achieve an average accuracy of 98:75% in the anticipation task using only an average of 25% of observations. Also, considering that a good anticipation model should perform well in the action recognition task, we achieve an average accuracy of 100% in action recognition on the Acticipate dataset, when the entire observation set is used. (C) 2020 Elsevier B.V. All rights reserved.
机译:要在协作环境人类交互,机器需要能够预测(即预测)将来的事件,并及时执行动作。然而,人类的肢体运动的观察可能不足以明确地预见自己的行为。在这项工作中,我们考虑两个信息其他来源(即上下文)随着时间的推移,凝视,运动和对象信息,并研究这些额外的上下文线索如何提高动作的预期效果。我们应对行动的预期为分类任务,其中该模型将可用的信息作为输入和预测最有可能的行动。我们建议使用不确定性每个预测作为行动的预期在线决策标准。作为随机过程应用到的基于时间的神经网络结构,这改进了常规的类似然(即,确定性的)标准不确定度建模。本文的主要贡献四个方面:(一)我们提出了一个新颖而有效的决策标准,可以用来预测即使在高歧义的情况下行动; (二)我们提出了一个深刻的建筑,使用Acticipate协作数据集时的动作预期任务优于先前的结果; (iii)本公司表明,上下文信息是很重要的歧义类似行动的解释; (四)我们还提供了可以很容易地用于在Acticipate数据集评估行动的预期models.Our结果现有三个性能指标的正式描述显示的上下文信息,并采取行动预期的不确定性标准的重要性。我们实现了98的平均精度:在预期的任务只使用观测的25%的平均水平75%。此外,考虑到良好的预测模型应该在动作识别任务完成好,我们实现了动作识别的Acticipate数据集,当使用整个观察组的100%的平均准确度。 (c)2020 Elsevier B.V.保留所有权利。

著录项

  • 来源
    《Neurocomputing》 |2021年第15期|301-318|共18页
  • 作者单位

    Univ Fed Espirito Santo Dept Elect Engn Room 20 CT 2 Av Fernando Ferrari 514 BR-29075910 Vitoria ES Brazil;

    Univ Lisbon Inst Syst & Robot Inst Super Tecn Floor 7 North Tower Av Rovisco Pais 1 P-1049001 Lisbon Portugal;

    Univ Fed Espirito Santo Dept Elect Engn Room 20 CT 2 Av Fernando Ferrari 514 BR-29075910 Vitoria ES Brazil;

    Univ Fed Espirito Santo Dept Elect Engn Room 20 CT 2 Av Fernando Ferrari 514 BR-29075910 Vitoria ES Brazil;

    Univ Lisbon Inst Syst & Robot Inst Super Tecn Floor 7 North Tower Av Rovisco Pais 1 P-1049001 Lisbon Portugal;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Action anticipation; Early action prediction; Context information; Bayesian deep learning; Uncertainty;

    机译:行动预期;早期行动预测;背景信息;贝叶斯深度学习;不确定性;

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