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Long-Term Anticipation of Activities with Cycle Consistency

机译:长期期待活动循环一致性

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With the success of deep learning methods in analyzing activities in videos, more attention has recently been focused towards anticipating future activities. However, most of the work on anticipation either analyzes a partially observed activity or predicts the next action class. Recently, new approaches have been proposed to extend the prediction horizon up to several minutes in the future and that anticipate a sequence of future activities including their durations. While these works decouple the semantic interpretation of the observed sequence from the anticipation task, we propose a framework for anticipating future activities directly from the features of the observed frames and train it in an end-to-end fashion. Furthermore, we introduce a cycle consistency loss over time by predicting the past activities given the predicted future. Our framework achieves state-of-the-art results on two datasets: the Breakfast dataset and 50Salads.
机译:随着深度学习方法的成功在分析视频中的活动方面,最近一直关注预期未来的活动。 然而,大多数关于预期的工作要么分析部分观察到的活动或预测下一个动作类。 最近,已经提出了新方法将未来的预测范围扩展到几分钟,并且预期一系列未来的活动,包括其持续时间。 虽然这些作品从预期任务中解脱了观察到的序列的语义解释,但我们提出了一个框架,用于直接从观察到的框架的特征直接预测未来的活动,并以端到端的方式训练它。 此外,我们通过预测预测未来的过去的活动来推出一段时间的循环一致性损失。 我们的框架在两个数据集上实现最先进的结果:早餐数据集和50salads。

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