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Spatio-Temporal Detection of Fine-Grained Dyadic Human Interactions

机译:细粒度二进位人际互动的时空检测

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We introduce a novel spatio-temporal deformable part model for offline detection of fine-grained interactions in video. One novelty of the model is that part detectors model the interacting individuals in a single graph that can contain different combinations of feature descriptors. This allows us to use both body pose and movement to model the coordination between two people in space and time. We evaluate the performance of our approach on novel and existing interaction datasets. When testing only on the target class, we achieve mean average precision scores of 0.82. When presented with distractor classes, the additional modelling of the motion of specific body parts significantly reduces the number of confusions. Cross-dataset tests demonstrate that our trained models generalize well to other settings.
机译:我们介绍了一种新颖的时空可变形部分模型,用于离线检测视频中的细粒度交互。该模型的一个新颖之处在于,零件检测器可以在单个图形中对交互的个体进行建模,该图形可以包含特征描述符的不同组合。这使我们能够使用身体姿势和动作来模拟两个人在空间和时间上的协调。我们评估我们的方法在新颖和现有交互数据集上的性能。仅在目标类别上进行测试时,我们获得的平均平均精度得分为0.82。当出现干扰项类别时,对特定身体部位运动的附加建模可以显着减少混乱的次数。跨数据集测试表明,我们训练有素的模型可以很好地推广到其他设置。

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