Leveraging Attribute Knowledge for Open-set Action Recognition

Kaixiang Yang, Junyu Gao, Yangbo Feng, Changsheng Xu
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Abstract

Open-set action recognition(OSAR) aims to recognize known classes and reject unknown classes. Most OSAR methods focus on learning a favorable threshold to distinguish known and unknown samples in a pure data-driven manner. However, these methods do not utilize the prior knowledge of action classes. In this paper, we propose to Leverage Attribute Knowledge (LAK) for OSAR. Specifically, the class-attribute knowledge learning is designed to integrate attribute knowledge into the model based on spatial-temporal features. Here, attributes are used as a bridge, linking known and unknown classes implicitly to make up the knowledge gap. Furthermore, a learnable relation matrix is adaptively adjusted during training to obtain the class-attribute relations that are expected to be generalized in open-set settings. Extensive experiments on three popular datasets show that the proposed method achieves state-of-the-art performance.
利用属性知识进行开集动作识别
开放集动作识别(OSAR)的目标是识别已知类,拒绝未知类。大多数OSAR方法专注于学习一个有利的阈值,以纯数据驱动的方式区分已知和未知样本。然而,这些方法不利用动作类的先验知识。在本文中,我们提出利用属性知识(LAK)进行OSAR。其中,类属性知识学习是基于时空特征将属性知识整合到模型中。在这里,属性被用作桥梁,隐式地连接已知和未知类,以弥补知识差距。此外,在训练过程中自适应调整可学习的关系矩阵,以获得期望在开集设置下泛化的类属性关系。在三个流行的数据集上进行的大量实验表明,所提出的方法达到了最先进的性能。
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