Action Recognition based on Cross-Situational Action-object Statistics

Satoshi Tsutsui, Xizi Wang, Guangyuan Weng, Yayun Zhang, David J. Crandall, Chen Yu
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Abstract

Machine learning models of visual action recognition are typically trained and tested on data from specific situations where actions are associated with certain objects. It is an open question how action-object associations in the training set influence a model’s ability to generalize beyond trained situations. We set out to identify properties of training data that lead to action recognition models with greater generalization ability. To do this, we take inspiration from a cognitive mechanism called cross-situational learning, which states that human learners extract the meaning of concepts by observing instances of the same concept across different situations. We perform controlled experiments with various types of action-object associations, and identify key properties of action-object co-occurrence in training data that lead to better classifiers. Given that these properties are missing in the datasets that are typically used to train action classifiers in the computer vision literature, our work provides useful insights on how we should best construct datasets for efficiently training for better generalization.
基于跨情景动作对象统计的动作识别
视觉动作识别的机器学习模型通常是在动作与特定对象相关联的特定情况下的数据上进行训练和测试的。训练集中的动作-对象关联如何影响模型在训练情况之外的泛化能力,这是一个悬而未决的问题。我们开始识别训练数据的属性,从而产生具有更强泛化能力的动作识别模型。为了做到这一点,我们从一种称为跨情境学习的认知机制中获得灵感,该机制指出,人类学习者通过在不同情境中观察相同概念的实例来提取概念的含义。我们对各种类型的动作-对象关联进行了对照实验,并确定了训练数据中动作-对象共现的关键属性,从而产生更好的分类器。考虑到这些属性在计算机视觉文献中通常用于训练动作分类器的数据集中是缺失的,我们的工作为我们如何最好地构建数据集以有效地训练更好的泛化提供了有用的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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