骨骼少弹动作识别的时间视点运输计划

Lei Wang, Piotr Koniusz
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引用次数: 12

摘要

我们提出了一种基于关节时间和摄像机视点对齐(JEANIE)的基于三维骨架的动作识别的少镜头学习管道。为了消除三维人体关节的查询和支持序列之间的不对齐,我们提出了一种先进的动态时间翘曲方法,该方法联合建模查询和支持帧之间的每个平滑路径,以在有限的少量训练数据下同时在时间和模拟摄像机视点空间中实现端到端学习的最佳对齐。序列编码与时序块编码器基于简单谱图卷积,一个轻量级的线性图神经网络骨干。我们还包括一个带有变压器的设置。最后,我们提出了一个基于相似性的损失,它鼓励同类序列的对齐,同时防止不相关序列的对齐。我们展示了NTU-60, NTU-120, Kinetics-skeleton和UWA3D Multiview Activity II的最先进的结果。
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Temporal-Viewpoint Transportation Plan for Skeletal Few-shot Action Recognition
We propose a Few-shot Learning pipeline for 3D skeleton-based action recognition by Joint tEmporal and cAmera viewpoiNt alIgnmEnt (JEANIE). To factor out misalignment between query and support sequences of 3D body joints, we propose an advanced variant of Dynamic Time Warping which jointly models each smooth path between the query and support frames to achieve simultaneously the best alignment in the temporal and simulated camera viewpoint spaces for end-to-end learning under the limited few-shot training data. Sequences are encoded with a temporal block encoder based on Simple Spectral Graph Convolution, a lightweight linear Graph Neural Network backbone. We also include a setting with a transformer. Finally, we propose a similarity-based loss which encourages the alignment of sequences of the same class while preventing the alignment of unrelated sequences. We show state-of-the-art results on NTU-60, NTU-120, Kinetics-skeleton and UWA3D Multiview Activity II.
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