Deep convolutional neural network classifier for travel patterns using binary sensors

Munkhjargal Gochoo, Shing-Hong Liu, Damdinsuren Bayanduuren, Tan-Hsu Tan, Vijayalakshmi Velusamy, Tsung-Yu Liu
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引用次数: 8

Abstract

The early detection of dementia is crucial in independent life style of elderly people. Main intention of this study is to propose device-free non-privacy invasive Deep Convolutional Neural Network classifier (DCNN) for Martino-Saltzman's (MS) travel patterns of elderly people living alone using open dataset collected by binary (passive infrared) sensors. Travel patterns are classified as direct, pacing, lapping, or random according to MS model. MS travel pattern is highly related with person's cognitive state, thus can be used to detect early stage of dementia. The dataset was collected by monitoring a cognitively normal elderly resident by wireless passive infrared sensors for 21 months. First, over 70000 travel episodes are extracted from the dataset and classified by MS travel pattern classifier algorithm for the ground truth. Later, 12000 episodes (3000 for each pattern) were randomly selected from the total episodes to compose training and testing dataset. Finally, DCNN performance was compared with three other classical machine-learning classifiers. The Random Forest and DCNN yielded the best classification accuracies of 94.48% and 97.84%, respectively. Thus, the proposed DCNN classifier can be used to infer dementia through travel pattern matching.
基于二元传感器的深度卷积神经网络旅行模式分类器
早期发现痴呆对老年人独立生活方式至关重要。本研究的主要目的是利用二进制(被动红外)传感器收集的开放数据集,提出无设备、无隐私侵入性的深度卷积神经网络分类器(DCNN)来识别独居老年人的马提诺-萨尔茨曼(MS)旅行模式。根据MS模型,旅行模式分为直接旅行、踱步旅行、绕行旅行和随机旅行。MS移动模式与人的认知状态高度相关,可用于早期痴呆的检测。数据集是通过无线被动红外传感器监测认知正常的老年居民21个月收集的。首先,从数据集中提取7万多个旅行集,并使用MS旅行模式分类器算法对地面真实度进行分类。随后,从总集中随机抽取12000集(每个模式3000集)组成训练和测试数据集。最后,将DCNN的性能与其他三种经典机器学习分类器进行比较。随机森林和DCNN的分类准确率最高,分别为94.48%和97.84%。因此,提出的DCNN分类器可以通过旅行模式匹配来推断痴呆症。
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