护理活动识别挑战:多种预处理方法的比较验证

Hitoshi Matsuyama, Takuto Yoshida, Nozomi Hayashida, Yuto Fukushima, Takuro Yonezawa, Nobuo Kawaguchi
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引用次数: 2

摘要

尽管在过去的二十年里,人们对活动识别进行了大量的研究,但在特定领域中处理复杂的活动类仍然不是那么容易。利用实验室和现场数据的第二届护士护理活动识别挑战旨在通过关注护士护理来探索这些复杂活动的一部分。我们的团队“UCLab”发现,挑战中的主要问题是数据集的不平衡和不均匀,这些问题经常发生在实场数据中。考虑到这个问题,我们使用了一个基于随机森林的方法,并进行了多次预处理,对12种活动模式进行了分类。我们的方法包括以下步骤:我们首先对加速度数据进行预处理,以获得均匀采样的信号。然后根据给定标签数据的每一行提取加速度数据并提取特征值。我们采用Random Forest进行分类,并对从分类器中得到的预测数据进行后处理。结果,我们在基于试验的评估中获得了51.5%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nurse care activity recognition challenge: a comparative verification of multiple preprocessing approaches
Although activity recognition has been studied considerably for the last two decades, it is still not so easy to handle complicated activity classes in a specific domain. The 2nd Nurse Care Activity Recognition Challenge Using Lab and Field Data aims to explore a part of those complicated activities by focusing on the nurse caring. Our team, "UCLab", found that the main problem in the challenge is the imbalance and unevenness of the dataset, each of which often happens in real-field data. Considering the problem, we approached the challenge using a Random Forest-based method with multiple preprocessing to classify 12 activity modes. Our approach consists of the following steps: We first preprocessed the acceleration data to obtain uniformly sampled signals. Then we extracted acceleration data with respect to each row of the given label data and extracted feature values. We adopted Random Forest for classification and performed post-processing to the predicted data obtained from the classifier. As a result, we obtained 51.5% accuracy with the trial-based evaluation.
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