用于识别食物准备活动的用户自适应模型

Sebastian Stein, S. McKenna
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引用次数: 19

摘要

识别复杂的活动是一个具有挑战性的研究问题,特别是在活动执行方式存在很强的可变性的情况下。食物准备活动就是最好的例子,涉及许多不同的器具和配料,以及高度的人与人之间的差异。识别模型需要适应用户,以便稳健地解释用户之间的差异。本文提出了三种用户自适应的方法:将在通用和用户特定数据上分别训练的分类器结合起来,从通用和用户特定数据中联合训练单个支持向量机,以及对通用和用户特定样本分配不同概率质量的加权k -近邻公式。通过制作混合沙拉的视频和加速度计数据对这些方法进行了评估。一般模型和特定用户模型的结合大大提高了活动识别的准确性,并且在只有有限数量的训练科目的数据时特别有希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
User-adaptive models for recognizing food preparation activities
Recognizing complex activities is a challenging research problem, particularly in the presence of strong variability in the way activities are performed. Food preparation activities are prime examples, involving many different utensils and ingredients as well as high inter-person variability. Recognition models need to adapt to users in order to robustly account for differences between them. This paper presents three methods for user-adaptation: combining classifiers that were trained separately on generic and user-specific data, jointly training a single support vector machine from generic and user-specific data, and a weighted K-nearest-neighbor formulation with different probability mass assigned to generic and user-specific samples. The methods are evaluated on video and accelerometer data of people preparing mixed salads. A combination of generic and user-specific models considerably increased activity recognition accuracy and was shown to be particularly promising when data from only a limited number of training subjects was available.
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