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A Practical Approach for Recognizing Eating Moments with Wrist-Mounted Inertial Sensing. 利用腕式惯性传感器识别进食时刻的实用方法
Edison Thomaz, Irfan Essa, Gregory D Abowd

Recognizing when eating activities take place is one of the key challenges in automated food intake monitoring. Despite progress over the years, most proposed approaches have been largely impractical for everyday usage, requiring multiple on-body sensors or specialized devices such as neck collars for swallow detection. In this paper, we describe the implementation and evaluation of an approach for inferring eating moments based on 3-axis accelerometry collected with a popular off-the-shelf smartwatch. Trained with data collected in a semi-controlled laboratory setting with 20 subjects, our system recognized eating moments in two free-living condition studies (7 participants, 1 day; 1 participant, 31 days), with F-scores of 76.1% (66.7% Precision, 88.8% Recall), and 71.3% (65.2% Precision, 78.6% Recall). This work represents a contribution towards the implementation of a practical, automated system for everyday food intake monitoring, with applicability in areas ranging from health research and food journaling.

识别进食活动发生的时间是自动食物摄入量监测的关键挑战之一。尽管多年来取得了一些进展,但大多数建议的方法在日常使用中都很不实用,因为需要多个身体传感器或专门设备(如用于吞咽检测的颈圈)。在本文中,我们介绍了一种方法的实施和评估情况,该方法基于通过流行的现成智能手表收集的三轴加速度计来推断进食时刻。我们的系统使用在半受控实验室环境中收集的 20 名受试者的数据进行训练,在两项自由生活条件研究(7 名受试者,1 天;1 名受试者,31 天)中识别出进食时刻,F 值分别为 76.1%(准确率 66.7%,召回率 88.8%)和 71.3%(准确率 65.2%,召回率 78.6%)。这项工作为实现日常食物摄入量监测的实用自动系统做出了贡献,适用于健康研究和食物日志等领域。
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引用次数: 0
MobileRF: A Robust Device-Free Tracking System Based On a Hybrid Neural Network HMM Classifier. 基于混合神经网络HMM分类器的鲁棒无设备跟踪系统。
Anindya S Paul, Eric A Wan, Fatema Adenwala, Erich Schafermeyer, Nick Preiser, Jeffrey Kaye, Peter G Jacobs

We present a device-free indoor tracking system that uses received signal strength (RSS) from radio frequency (RF) transceivers to estimate the location of a person. While many RSS-based tracking systems use a body-worn device or tag, this approach requires no such tag. The approach is based on the key principle that RF signals between wall-mounted transceivers reflect and absorb differently depending on a person's movement within their home. A hierarchical neural network hidden Markov model (NN-HMM) classifier estimates both movement patterns and stand vs. walk conditions to perform tracking accurately. The algorithm and features used are specifically robust to changes in RSS mean shifts in the environment over time allowing for greater than 90% region level classification accuracy over an extended testing period. In addition to tracking, the system also estimates the number of people in different regions. It is currently being developed to support independent living and long-term monitoring of seniors.

我们提出了一个无设备的室内跟踪系统,它使用从射频收发器接收的信号强度(RSS)来估计一个人的位置。虽然许多基于rss的跟踪系统使用穿戴式设备或标签,但这种方法不需要这样的标签。该方法基于一个关键原理,即壁挂式收发器之间的射频信号反射和吸收不同,这取决于一个人在家中的活动。层次神经网络隐马尔可夫模型(NN-HMM)分类器估计运动模式和站立与行走条件,以准确地执行跟踪。所使用的算法和特征对环境中随时间变化的RSS平均位移具有特别的鲁棒性,允许在延长的测试期间实现超过90%的区域级分类精度。除了跟踪,该系统还可以估计不同地区的人数。它目前正在开发中,以支持老年人的独立生活和长期监测。
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引用次数: 28
Multi-sensor physical activity recognition in free-living. 自由生活中的多传感器身体活动识别。
Katherine Ellis, Suneeta Godbole, Jacqueline Kerr, Gert Lanckriet

Physical activity monitoring in free-living populations has many applications for public health research, weight-loss interventions, context-aware recommendation systems and assistive technologies. We present a system for physical activity recognition that is learned from a free-living dataset of 40 women who wore multiple sensors for seven days. The multi-level classification system first learns low-level codebook representations for each sensor and uses a random forest classifier to produce minute-level probabilities for each activity class. Then a higher-level HMM layer learns patterns of transitions and durations of activities over time to smooth the minute-level predictions. [Formula: see text].

自由生活人群的身体活动监测在公共卫生研究、减肥干预、情境感知推荐系统和辅助技术方面有许多应用。我们提出了一个身体活动识别系统,该系统是从40名女性的自由生活数据集中学习的,这些女性在7天内佩戴了多个传感器。多级分类系统首先为每个传感器学习低级码本表示,并使用随机森林分类器为每个活动类生成分钟级概率。然后,更高级的HMM层学习过渡模式和活动持续时间,以平滑分钟级的预测。[公式:见正文]。
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引用次数: 43
Assessing the Availability of Users to Engage in Just-in-Time Intervention in the Natural Environment. 评估用户在自然环境中参与即时干预的可用性。
Hillol Sarker, Moushumi Sharmin, Amin Ahsan Ali, Md Mahbubur Rahman, Rummana Bari, Syed Monowar Hossain, Santosh Kumar

Wearable wireless sensors for health monitoring are enabling the design and delivery of just-in-time interventions (JITI). Critical to the success of JITI is to time its delivery so that the user is available to be engaged. We take a first step in modeling users' availability by analyzing 2,064 hours of physiological sensor data and 2,717 self-reports collected from 30 participants in a week-long field study. We use delay in responding to a prompt to objectively measure availability. We compute 99 features and identify 30 as most discriminating to train a machine learning model for predicting availability. We find that location, affect, activity type, stress, time, and day of the week, play significant roles in predicting availability. We find that users are least available at work and during driving, and most available when walking outside. Our model finally achieves an accuracy of 74.7% in 10-fold cross-validation and 77.9% with leave-one-subject-out.

用于健康监测的可穿戴无线传感器使及时干预措施(JITI)的设计和交付成为可能。JITI成功的关键在于它的交付时间,以便用户能够参与其中。我们通过分析2,064小时的生理传感器数据和2,717份来自30名参与者为期一周的实地研究的自我报告,迈出了用户可用性建模的第一步。我们使用响应提示的延迟来客观地衡量可用性。我们计算了99个特征,并确定了30个最具判别性,以训练机器学习模型来预测可用性。我们发现,地点、影响、活动类型、压力、时间和一周中的哪一天,在预测可用性方面起着重要作用。我们发现,用户在工作和开车时的可用性最低,而在户外行走时的可用性最高。我们的模型最终在10倍交叉验证中达到了74.7%的准确率,在留一主体的情况下达到了77.9%的准确率。
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引用次数: 112
Passive and In-situ Assessment of Mental and Physical Well-being using Mobile Sensors. 利用移动传感器对身心健康进行被动和原位评估。
Mashfiqui Rabbi, Shahid Ali, Tanzeem Choudhury, Ethan Berke

The idea of continuously monitoring well-being using mobile-sensing systems is gaining popularity. In-situ measurement of human behavior has the potential to overcome the short comings of gold-standard surveys that have been used for decades by the medical community. However, current sensing systems have mainly focused on tracking physical health; some have approximated aspects of mental health based on proximity measurements but have not been compared against medically accepted screening instruments. In this paper, we show the feasibility of a multi-modal mobile sensing system to simultaneously assess mental and physical health. By continuously capturing fine grained motion and privacy-sensitive audio data, we are able to derive different metrics that reflect the results of commonly used surveys for assessing well-being by the medical community. In addition, we present a case study that highlights how errors in assessment due to the subjective nature of the responses could potentially be avoided by continuous sensing and inference of social interactions and physical activities.

使用移动传感系统持续监测健康状况的想法越来越受欢迎。对人类行为的现场测量有可能克服医学界几十年来一直使用的金标准调查的缺点。然而,目前的传感系统主要集中在跟踪身体健康;一些基于接近测量的近似心理健康方面,但尚未与医学上接受的筛查工具进行比较。在本文中,我们展示了一个多模态移动传感系统同时评估心理和身体健康的可行性。通过不断捕获细粒度的运动和隐私敏感的音频数据,我们能够得出不同的指标,这些指标反映了医学界用于评估健康的常用调查的结果。此外,我们提出了一个案例研究,强调了如何通过持续的感知和推断社会互动和身体活动来潜在地避免由于反应的主观性质而导致的评估错误。
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引用次数: 235
Using Wearable Activity Type Detection to Improve Physical Activity Energy Expenditure Estimation. 利用可穿戴活动类型检测改进体育活动能量消耗估算。
Fahd Albinali, Stephen S Intille, William Haskell, Mary Rosenberger

Accurate, real-time measurement of energy expended during everyday activities would enable development of novel health monitoring and wellness technologies. A technique using three miniature wearable accelerometers is presented that improves upon state-of-the-art energy expenditure (EE) estimation. On a dataset acquired from 24 subjects performing gym and household activities, we demonstrate how knowledge of activity type, which can be automatically inferred from the accelerometer data, can improve EE estimates by more than 15% when compared to the best estimates from other methods.

对日常活动中消耗的能量进行精确、实时的测量,将有助于开发新型健康监测和保健技术。本文介绍了一种使用三个微型可穿戴加速度计的技术,该技术改进了最先进的能量消耗(EE)估算方法。在一个从 24 名进行健身和家务活动的受试者处获得的数据集上,我们展示了如何通过加速度计数据自动推断出活动类型,从而将能量消耗估算值与其他方法的最佳估算值相比提高 15%以上。
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引用次数: 0
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Proceedings of the ... ACM International Conference on Ubiquitous Computing . UbiComp (Conference)
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