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Deep-Temporal LSTM for Daily Living Action Recognition

机译:深度休闲行动识别的深颞LSTM

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In this paper, we propose to improve the traditional use of RNNs by employing a many to many model for video classification. We analyze the importance of modeling spatial layout and temporal encoding for daily living action recognition. Many RGB methods focus only on short term temporal information obtained from optical flow. Skeleton based methods on the other hand show that modeling long term skeleton evolution improves action recognition accuracy. In this work, we propose a deep-temporal LSTM architecture which extends standard LSTM and allows better encoding of temporal information. In addition, we propose to fuse 3D skeleton geometry with deep static appearance. We validate our approach on public available CAD60, MSRDailyActivity3D and NTU-RGB+D, achieving competitive performance as compared to the state-of-the art.
机译:在本文中,我们建议通过为视频分类使用许多模型来改善传统使用RNN。我们分析了日常生活行动识别的空间布局和时间编码的重要性。许多RGB方法仅关注从光流量获得的短期时间信息。另一方面,基于骨架的方法表明,建模长期骨架演变提高了动作识别准确性。在这项工作中,我们提出了一种深度时间的LSTM架构,其扩展了标准LSTM并更好地编码时间信息。此外,我们提出了熔断器3D骨架几何形状,深度静态。我们验证了我们在公共可用CAD60,MSRDAILY活动3D和NTU-RGB + D上的方法,与最先进的竞争性能实现竞争性能。

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