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首页> 外文期刊>Journal of visual communication & image representation >Improved action proposals using fine-grained proposal features with recurrent attention models
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Improved action proposals using fine-grained proposal features with recurrent attention models

机译:使用细粒度提案功能和循环注意力模型改进行动提案

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Recent models for the temporal action proposal task show that local properties can be an alternative to the region proposal network (RPN) for generating good proposal candidates on untrimmed videos. In this study, we devise an RPN model with a new two-stage pipeline and a new joint scoring function for temporal proposals. The evaluation of local properties is integrated into our RPN model to search for the best proposal candidates that can be distinguished mainly in fine details of proposal regions. Our network models proposals in multiple scales using two recurrent neural network layers with attention mechanisms. We observe that joint training of the RPN with local clues and multi-scale modeling of proposals with recurrent attention mechanisms improve the performance of the proposal generation task. Our model yields state-of-the-art results on the THUMOS-14 and comparable results on the ActivityNet-1.3 datasets.
机译:时间行动建议任务的最新模型表明,局部属性可以替代区域建议网络 (RPN),用于在未修剪的视频上生成良好的建议候选项。在这项研究中,我们设计了一个RPN模型,该模型具有新的两阶段流水线和新的时间建议联合评分函数。对局部属性的评估被集成到我们的 RPN 模型中,以搜索最佳提案候选者,这些候选提案主要可以通过提案区域的细节来区分。我们的网络使用两个具有注意力机制的递归神经网络层在多个尺度上对提案进行建模。我们观察到,使用局部线索对RPN进行联合训练,并对具有循环注意力机制的提案进行多尺度建模,可以提高提案生成任务的性能。我们的模型在 THUMOS-14 上产生了最先进的结果,在 ActivityNet-1.3 数据集上产生了可比的结果。

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