IEEE J Biomed Health Inform. 2015 May;19(3):825-31. doi: 10.1109/JBHI.2014.2329137. Epub 2014 Jun 5.
This paper considers the problem of recognizing eating gestures by tracking wrist motion. Eating gestures are activities commonly undertaken during the consumption of a meal, such as sipping a drink of liquid or using utensils to cut food. Each of these gestures causes a pattern of wrist motion that can be tracked to automatically identify the activity. Previous works have studied this problem at the level of a single gesture. In this paper, we demonstrate that individual gestures have sequential dependence. To study this, three types of classifiers were built: 1) a K-nearest neighbor classifier which uses no sequential context, 2) a hidden Markov model (HMM) which captures the sequential context of subgesture motions, and 3) HMMs that model intergesture sequential dependencies. We built first-order to sixth-order HMMs to evaluate the usefulness of increasing amounts of sequential dependence to aid recognition. On a dataset of 25 meals, we found that the baseline accuracies for the KNN and the subgesture HMM classifiers were 75.8% and 84.3%, respectively. Using HMMs that model intergesture sequential dependencies, we were able to increase accuracy to up to 96.5%. These results demonstrate that sequential dependencies exist between eating gestures and that they can be exploited to improve recognition accuracy.
本文研究了通过跟踪手腕运动来识别进食动作的问题。进食动作是在进食过程中常见的活动,例如喝液体或使用餐具切割食物。这些动作中的每一个都会导致手腕运动的模式,可以通过跟踪来自动识别活动。之前的工作已经在单个动作的层面上研究了这个问题。在本文中,我们证明了单个动作具有序列依赖性。为了研究这一点,我们构建了三种类型的分类器:1)不使用序列上下文的 K 最近邻分类器,2)捕获子动作运动序列上下文的隐马尔可夫模型(HMM),以及 3)建模子动作序列依赖性的 HMM。我们构建了一阶到六阶 HMM,以评估增加序列依赖程度对识别的帮助。在一个包含 25 餐的数据集上,我们发现 KNN 和子动作 HMM 分类器的基线准确率分别为 75.8%和 84.3%。通过使用建模子动作序列依赖性的 HMM,我们能够将准确率提高到高达 96.5%。这些结果表明,进食动作之间存在序列依赖性,并且可以利用这些依赖性来提高识别准确率。