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A Generative Approach to Zero-Shot and Few-Shot Action Recognition

机译:零射击和几次射击动作识别的一种生成方法

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We present a generative framework for zero-shot action recognition where some of the possible action classes do not occur in the training data. Our approach is based on modeling each action class using a probability distribution whose parameters are functions of the attribute vector representing that action class. In particular, we assume that the distribution parameters for any action class in the visual space can be expressed as a linear combination of a set of basis vectors where the combination weights are given by the attributes of the action class. These basis vectors can be learned solely using labeled data from the known (i.e., previously seen) action classes, and can then be used to predict the parameters of the probability distributions of unseen action classes. We consider two settings: (1) Inductive setting, where we use only the labeled examples of the seen action classes to predict the unseen action class parameters; and (2) Transductive setting which further leverages unlabeled data from the unseen action classes. Our framework also naturally extends to few-shot action recognition where a few labelled examples from unseen classes are available. Our experiments on benchmark datasets (UCF101, HMDB51 and Olympic) show significant performance improvements as compared to various baselines, in both standard zero-shot (disjoint seen and unseen classes) and generalized zero-shot learning settings.
机译:我们为零拍摄动作识别提出了一种生成框架,其中一些可能的动作类在训练数据中不会发生。我们的方法基于使用概率分布建模每个动作类,其参数是表示该操作类的属性矢量的函数。特别地,我们假设视觉空间中的任何动作类的分发参数可以表示为一组基向量的线性组合,其中组合权重由动作类的属性给出。这些基向量可以仅使用来自已知的(即,先前看到的)动作类的标记数据,并且可以用于预测未经操作类的概率分布的参数。我们考虑两个设置:(1)归纳设置,在那里我们只使用所谓的动作类的标记示例来预测未经操作类参数; (2)转换设置,进一步利用未代标数据从看不见的行动课程。我们的框架也自然地扩展到几次动作识别,其中可以提供来自Unseen类的一些标记的示例。我们在基准数据集(UCF101,HMDB51和奥林匹克)上的实验显示出与各种基线相比的显着性能改进,在标准零射(不相交的视野和看不见的类)和广义零射击学习设置中。

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