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Enhancement of Fall Detection Algorithm Using Convolutional Autoencoder and Personalized Threshold

机译:使用卷积AutomEncoder和个性化阈值提高跌倒检测算法

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Falling is a hazardous situation for elderly people living alone and labor workers as they are easy to happen and can lead to serious injuries. Hence, a fall detection mechanism is an indispensable way to rescue victims without a delay. Various fall detection systems detect falling by using supervised deep-learning algorithms. However, labeling training data and collecting various falling motions data large enough for deep-learning is time-consuming and tiresome. Therefore, this study aims to develop a fall detection system utilizing the data not from falling but from usual motions of daily life. In this paper, an unsupervised learning method, convolutional autoencoder, and a wearable sensor, inertial measurement unit (IMU), were employed. The motion data from the IMU is converted to monochrome images for training and evaluating the developed fall detection algorithm. Falling is determined by comparing the input and output images of the model and a method for setting a threshold was investigated. After confirming the accuracy of the proposed method using a publicly available dataset and our dataset, the proposed method to train the model and to determine the threshold were addressed. Finally, the fall detection result with a sensitivity and a specificity of 100% and 99% was obtained.
机译:堕落是为独自生活和劳工人员而易于发生的老年人的危险情况,可能导致严重伤害。因此,堕落的检测机制是拯救受害者而不会延迟的不可或缺的方式。通过使用监督的深度学习算法来检测各种秋季检测系统。然而,标记培训数据和收集足够大的各种下降动作数据以进行深度学习是耗时和令人厌恶的。因此,本研究旨在利用不落下的数据来发展跌倒检测系统,而是从日常生活的常用动作。本文采用了无监督的学习方法,卷积自动拓和可穿戴传感器,惯性测量单元(IMU)。来自IMU的运动数据被转换为单色图像以进行训练和评估发达的落后检测算法。通过比较模型的输入和输出图像来确定落下的,并研究了用于设置阈值的方法。在使用公共数据集和我们的数据集确认所提出的方法的准确性之后,解决了培训模型和确定阈值的建议方法。最后,获得了敏感性和100%和99%的敏感性的落后检测结果。

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