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Anticipation of Human Actions With Pose-Based Fine-Grained Representations

机译:基于姿势的细粒度表示法对人类行为的预期

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Anticipating an action that is about to happen allows us to be more efficient in interacting with our environment. However, prediction is a challenging task in computer vision, because videos are only partially available when a decision is to be made. Complicating the issue is that it is not always clear which of the visible activities in the scene are relevant to the action, and which ones are not. We suggest that the key to recognizing an action lies with the human actors, and that it is therefore necessary for the prediction process to attend to persons in a scene. In our work, we extract fine-grained features on visible human actors and predict the future via an L2-regression in feature space. This allows the regressed future feature to focus on the actor. Using this, the future action is classified. More specifically, the fine-grained extraction is guided by a pose prediction system that models current and future human poses in the scene. We run qualitative and quantitative experiments on the Charades dataset, and initial results show that our system improves action prediction.
机译:预期将要发生的行动将使我们在与环境交互方面更加有效。但是,预测是计算机视觉中一项具有挑战性的任务,因为在做出决定时,视频仅部分可用。使问题复杂化的是,并不总是清楚场景中哪些可见活动与该动作相关,哪些无关。我们建议,识别动作的关键在于人类演员,因此预测过程中必须照顾到场景中的人物。在我们的工作中,我们提取可见人类角色上的细粒度特征,并通过特征空间中的L2回归预测未来。这使回归的未来功能可以将重点放在演员身上。使用此方法,可以对将来的动作进行分类。更具体地说,细粒度提取由一个姿势预测系统指导,该系统对场景中当前和将来的人类姿势进行建模。我们对Charades数据集进行了定性和定量实验,初步结果表明我们的系统可以改善动作预测。

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