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Segmental Spatiotemporal CNNs for Fine-Grained Action Segmentation

机译:细分时空CNN用于细粒度的动作分割

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Joint segmentation and classification of fine-grained actions is important for applications of human-robot interaction, video surveillance, and human skill evaluation. However, despite substantial recent progress in large-scale action classification, the performance of state-of-the-art fine-grained action recognition approaches remains low. We propose a model for action segmentation which combines low-level spatiotemporal features with a high-level segmental classifier. Our spatiotemporal CNN is comprised of a spatial component that represents relationships between objects and a temporal component that uses large ID convolutional filters to capture how object relationships change across time. These features are used in tandem with a semi-Markov model that captures transitions from one action to another. We introduce an efficient constrained segmental inference algorithm for this model that is orders of magnitude faster than the current approach. We highlight the effectiveness of our Segmental Spatiotemporal CNN on cooking and surgical action datasets for which we observe substantially improved performance relative to recent baseline methods.
机译:细粒度动作的联合细分和分类对于人机交互,视频监控和人员技能评估的应用非常重要。但是,尽管最近在大规模动作分类方面取得了重大进展,但最新的细粒度动作识别方法的性能仍然很低。我们提出了一种将低水平时空特征与高水平分段分类器相结合的行动分段模型。我们的时空CNN由代表对象之间关系的空间部分和使用大型ID卷积过滤器捕获对象关系如何随时间变化的时间部分组成。这些功能与半马尔可夫模型一起使用,该模型可捕获从一个动作到另一个动作的过渡。我们为此模型引入了一种有效的约束分段推理算法,该算法比当前方法要快几个数量级。我们重点介绍了我们的分段时空CNN在烹饪和外科手术数据集上的有效性,相对于最近的基线方法,我们观察到了这些性能大大提高了。

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