动作查询的未来时刻评估

Qiuhong Ke, Mario Fritz, B. Schiele
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引用次数: 2

摘要

在本文中,我们的目标是解决评估感兴趣行动的未来时刻(AFM-AI)的任务。这个任务的目标是评估一个感兴趣的动作是否会发生,以及动作的开始时刻。我们的目标是评估未来任何时间范围内的起始时刻。为此,我们使用基于变分回归模块(VRM)和确定性残差网络的确定性残差引导变分回归模块(DR-VRM)来处理起始矩的回归任务作为生成任务。VRM考虑到不确定性,能够对起始时刻产生不同的预测。确定性网络鼓励VRM从确定性残差信息中学习,以便为力矩评估生成更精确的预测。在三个数据集上的实验结果清楚地表明,该方法能够对查询动作的起始时刻产生多样化和精确的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Future Moment Assessment for Action Query
In this paper, we aim to tackle the task of Assessing Future Moment of an Action of Interest (AFM-AI). The goal of this task is to assess if an action of interest will happen or not as well as the starting moment of the action. We aim to assess starting moments at any time-horizon of the future. To this end, we tackle the regression task of the starting moments as a generation task using a Deterministic Residual Guided Variational Regression Module (DR-VRM), which is built on a Variational Regression Module (VRM) and a deterministic residual network. The VRM takes the uncertainty into account and is capable of generating diverse predictions for the starting moment. The deterministic network encourages the VRM to learn from deterministic residual information in order to generate more precise predictions for moment assessment. Experimental results on three datasets clearly show that the proposed method is capable of generating both diverse and precise predictions of starting moments for query actions.
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