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A Method for Sensor-Based Activity Recognition in Missing Data Scenario

机译:缺少数据场景中的基于传感器的活动识别方法

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摘要

Sensor-based human activity recognition has various applications in the arena of healthcare, elderly smart-home, sports, etc. There are numerous works in this field—to recognize various human activities from sensor data. However, those works are based on data patterns that are clean data and have almost no missing data, which is a genuine concern for real-life healthcare centers. Therefore, to address this problem, we explored the sensor-based activity recognition when some partial data were lost in a random pattern. In this paper, we propose a novel method to improve activity recognition while having missing data without any data recovery. For the missing data pattern, we considered data to be missing in a random pattern, which is a realistic missing pattern for sensor data collection. Initially, we created different percentages of random missing data only in the test data, while the training was performed on good quality data. In our proposed approach, we explicitly induce different percentages of missing data randomly in the raw sensor data to train the model with missing data. Learning with missing data reinforces the model to regulate missing data during the classification of various activities that have missing data in the test module. This approach demonstrates the plausibility of the machine learning model, as it can learn and predict from an identical domain. We exploited several time-series statistical features to extricate better features in order to comprehend various human activities. We explored both support vector machine and random forest as machine learning models for activity classification. We developed a synthetic dataset to empirically evaluate the performance and show that the method can effectively improve the recognition accuracy from 80.8% to 97.5%. Afterward, we tested our approach with activities from two challenging benchmark datasets: the human activity sensing consortium (HASC) dataset and single chest-mounted accelerometer dataset. We examined the method for different missing percentages, varied window sizes, and diverse window sliding widths. Our explorations demonstrated improved recognition performances even in the presence of missing data. The achieved results provide persuasive findings on sensor-based activity recognition in the presence of missing data.
机译:基于传感器的人类活动识别在医疗保健,老年智能家庭,体育等方面具有各种应用。该领域有许多作品 - 以识别来自传感器数据的各种人类活动。然而,这些作品基于清洁数据的数据模式,并且几乎没有缺少数据,这对于现实生活保健中心来说是真正关注的。因此,为了解决这个问题,我们探讨了当某些部分数据以随机图案丢失时的基于传感器的活动识别。在本文中,我们提出了一种新的方法来提高活动识别,同时在没有任何数据恢复的情况下丢失数据。对于缺少的数据模式,我们认为要以随机模式丢失的数据,这是传感器数据收集的逼真缺失模式。最初,我们仅在测试数据中创建了不同的随机缺失数据百分比,而培训是对良好质量数据进行的。在我们提出的方法中,我们在原始传感器数据中随机地明确地诱导了不同的缺失数据,以训练模型与缺失的数据。使用缺失数据学习增强了模型,以调节缺失数据在分类测试模块中缺少数据的各种活动期间。这种方法展示了机器学习模型的合理性,因为它可以从相同的域中学习和预测。我们利用了多个时间序列统计特征来提取更好的特征,以便理解各种人类活动。我们探索了支持向量机和随机林作为活动分类的机器学习模型。我们开发了一种合成数据集以凭经验评估性能,并表明该方法可以有效地将识别精度从80.8%提高到97.5%。之后,我们通过两个具有挑战性的基准数据集的活动测试了我们的方法:人类活动传感联盟(HASC)数据集和单胸部安装的加速度计数据集。我们检查了不同缺失百分比,各种窗口尺寸和不同窗口滑动宽度的方法。即使在缺失数据存在下,我们的探索也表现出改善的识别表演。所达到的结果在存在缺失数据存在下基于传感器的活动识别提供了有说服力的发现。

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