Disentangled Action Recognition with Knowledge Bases

Zhekun Luo, Shalini Ghosh, Devin Guillory, Keizo Kato, Trevor Darrell, Huijuan Xu
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引用次数: 9

Abstract

Action in video usually involves the interaction of human with objects. Action labels are typically composed of various combinations of verbs and nouns, but we may not have training data for all possible combinations. In this paper, we aim to improve the generalization ability of the compositional action recognition model to novel verbs or novel nouns that are unseen during training time, by leveraging the power of knowledge graphs. Previous work utilizes verb-noun compositional action nodes in the knowledge graph, making it inefficient to scale since the number of compositional action nodes grows quadratically with respect to the number of verbs and nouns. To address this issue, we propose our approach: Disentangled Action Recognition with Knowledge-bases (DARK), which leverages the inherent compositionality of actions. DARK trains a factorized model by first extracting disentangled feature representations for verbs and nouns, and then predicting classification weights using relations in external knowledge graphs. The type constraint between verb and noun is extracted from external knowledge bases and finally applied when composing actions. DARK has better scalability in the number of objects and verbs, and achieves state-of-the-art performance on the Charades dataset. We further propose a new benchmark split based on the Epic-kitchen dataset which is an order of magnitude bigger in the numbers of classes and samples, and benchmark various models on this benchmark.
基于知识库的解纠缠动作识别
视频中的动作通常涉及人与物体的相互作用。动作标签通常由动词和名词的各种组合组成,但我们可能没有所有可能组合的训练数据。在本文中,我们的目标是利用知识图的力量,提高组合动作识别模型对训练期间未见过的新动词或新名词的泛化能力。以前的工作使用知识图中的动词-名词组合动作节点,由于组合动作节点的数量相对于动词和名词的数量呈二次增长,因此扩展效率低。为了解决这个问题,我们提出了我们的方法:基于知识库的解纠缠动作识别(DARK),它利用了动作的固有组合性。DARK通过首先提取动词和名词的解纠缠特征表示,然后使用外部知识图中的关系预测分类权重来训练分解模型。动词和名词之间的类型约束是从外部知识库中提取出来的,并最终应用于动作的构成。DARK在对象和动词的数量上具有更好的可扩展性,并且在Charades数据集上实现了最先进的性能。我们进一步提出了一种新的基于Epic-kitchen数据集的基准划分方法,该方法在类和样本数量上大了一个数量级,并在该基准上对各种模型进行了基准测试。
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