基于特征的随机森林护理活动识别,利用加速度计数据

Carolin Lübbe, Björn Friedrich, Sebastian J. F. Fudickar, S. Hellmers, A. Hein
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引用次数: 4

摘要

使用实验室和现场数据的第二次护士护理活动识别挑战解决了关于护理的重要问题和护理专业中对辅助系统(如自动文档系统)的需求。12种不同护理活动的数据用附着在护士右臂上的加速度计记录下来。同时考虑了实验室和现场数据。任务是根据加速度计的数据对每个活动进行分类。我们作为瓜德玛队参加了这次挑战。我们训练了一个随机森林分类器,在我们的内部测试集上达到了61.11%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。
Feature based random forest nurse care activity recognition using accelerometer data
The The 2nd Nurse Care Activity Recognition Challenge Using Lab and Field Data addresses the important issue about care and the need for assistance systems in the nursing profession like automatic documentation systems. Data of 12 different care activities were recorded with an accelerometer attached to the right arm of the nurses. Both, laboratory and field data were taken into account. The task was to classify each activity based on the accelerometer data. We participated as team Gudetama in the challenge. We trained a Random Forest classifier and achieved an accuracy of 61.11% on our internal test set.
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