Personalized fall detection system is shown to provide added and more benefits compare to the current fall detection system. The personalized model can also be applied to anything where one class of data is hard to gather. The results show that adapting to the user needs, improve the overall accuracy of the system. Future work includes detection of the smartphone on the user so that the user can place the system anywhere on the body and make sure it detects. Even though the accuracy is not 100% the proof of concept of personalization can be used to achieve greater accuracy. The concept of personalization used in this paper can also be extended to other research in the medical field or where data is hard to come by for a particular class. More research into the feature extraction and feature selection module should be investigated. For the feature selection module, more research into selecting features based on one class data.
翻译:个人化秋季检测系统显示,与当前秋季检测系统相比,个人化的秋天检测系统可以提供更多和更多的效益。个性化模型也可以适用于难以收集某一类数据的任何领域。结果显示,适应用户的需要,提高系统的总体准确性。未来的工作包括检测用户的智能手机,以便用户可以在身体的任何地方安装系统并确保其检测。即使准确性不是100%,个人化概念的证明也可以用来提高准确性。本文中使用的个人化概念也可以推广到医学领域的其他研究或特定类数据难以获得的其他研究。应当对特征提取和特征选择模块进行更多的研究。对于特征选择模块,应当进行更多的研究,根据一个类数据选择特征。