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Sleep Posture Recognition for Bedridden Patient

机译:睡眠姿势识别卧床不起患者

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One type of patients that needs to live on the bed for a certain time or worst, for the rest of their life is called bedridden. This type of patients need special attention from caretaker to regularly change the posture of the patient in order to prevent symptom named bed sore or pressure sore which will happen when the weight of the patient is applied to some points of the body too long which leads to injury to that certain points of the body. This research will carried out to design a system to relieve the work for the caretaker of a bedridden patient. This system consists of three parts; Sleep data collection where computer that connected to Kinect will continuously monitor the patient and send the data to the next part, Sleep posture analysis which will determine the postures of the patient from the input data, and Sleep notification part which will notify user with the current state of the patient. There are 3 machine learning algorithms that were chosen to compare their performance; Decision Tree (DT), Neural Network (NN), and Support Vector Machine (SVM). In the case of using the data from the same subjects as in the training set, DT shows lower accuracy at 93.33% than NN and SVM which achieve 100%. Similarly, in the case of using dataset that is not in the training set, DT still performs at 90% while both NN and SVM achieve 100%, the data are tested from both the subjects within the training set and new subjects but without any error exclusion which illustrates that NN which achieves 63.33% accuracy is more prone to the data with error than SVM which is 57.78%. Hence, NN is implemented with the system.
机译:一种类型的患者,需要在床上居住在床上一定或最差,其余的余生被称为卧床。这种类型的患者需要特别关注看护人,定期改变患者的姿势,以防止患者被命名的床疼痛或压力疼痛,这将在患者的重量应用于身体的某些点太长时发生的,这导致对身体某些点的伤害。该研究将开展设计一个系统,以减轻卧床患者的护理人员的工作。该系统由三个部分组成;睡眠数据集合,其中连接到Kinect的计算机将连续监控患者并将数据发送到下一个部分,睡眠状态分析,睡眠状态分析将从输入数据中确定患者的姿势,以及将向用户通知用户的睡眠通知部分。患者的状态。选择3个机器学习算法,以比较它们的性能;决策树(DT),神经网络(NN)和支持向量机(SVM)。在使用与训练集中相同的对象的数据的情况下,DT显示比NN和SVM在93.33%下的较低精度,达到100%。类似地,在使用不在训练集中的数据集的情况下,DT仍然在90%以90%执行,而NN和SVM都达到100%,则从训练集和新科目内的主题测试数据,但没有任何错误排除该说明达到63.33%精度的NN更容易容易出错的数据比SVM为57.78%。因此,NN用系统实现。

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