Current state-of-the-art methods for skeleton-based action recognition are supervised and rely on labels. The reliance is limiting the performance due to the challenges involved in annotation and mislabeled data. Unsupervised methods have been introduced, however, they organize sequences into clusters and still require labels to associate clusters with actions. In this paper, we propose a novel approach for skeleton-based action recognition, called SESAR, that connects these approaches. SESAR leverages the information from both unlabeled data and a handful of sequences actively selected for labeling, combining unsupervised training with sparsely supervised guidance. SESAR is composed of two main components, where the first component learns a latent representation for unlabeled action sequences through an Encoder-Decoder RNN which reconstructs the sequences, and the second component performs active learning to select sequences to be labeled based on cluster and classification uncertainty. When the two components are simultaneously trained on skeleton-based action sequences, they correspond to a robust system for action recognition with only a handful of labeled samples. We evaluate our system on common datasets with multiple sequences and actions, such as NW UCLA, NTU RGB+D 60, and UWA3D. Our results outperform standalone skeleton-based supervised, unsupervised with cluster identification, and active-learning methods for action recognition when applied to sparse labeled samples, as low as 1% of the data.
翻译:当前的基于骨骼的行动识别最新方法受到监督和依赖标签。 依赖性正在限制业绩, 原因是批注和贴错标签数据涉及的挑战。 但是, 采用了不受监督的方法, 将序列按组排列, 仍然需要标签将组与行动联系起来。 在本文中, 我们提出了一种基于骨骼的行动识别新办法, 称为 SESAR, 将这些方法联系起来。 SESAR 利用来自未贴标签的数据的信息和积极选择用于标签的少数序列的信息, 将不受监督的培训与分散监督的指导结合起来。 SESAR 由两个主要组成部分组成, 其中第一个组成部分通过重建序列的 Encoder-Decoder RNNN 来学习未贴标签的行动序列的潜在代表, 而第二个组成部分则积极学习根据组和分类不确定性来选择要标定的序列。 当两个组成部分同时接受基于基于骨架的行动序列的培训时, 它们相当于一个强有力的行动识别系统, 仅有少量标签的样本。 我们用通用数据设置的系统, 以多种排序和标准级的RBAR3 的模板,, 以我们作为不固定的IMFA 的结果, 。