Classification accuracies of physical activities using smartphone motion sensors.
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A survey of online activity recognition using mobile phonesUnderstanding the undelaying mechanism of HA-subtyping in the level of physic-chemical characteristics of proteinA Review of Wearable Technologies for Elderly Care that Can Accurately Track Indoor Position, Recognize Physical Activities and Monitor Vital Signs in Real Time.Increasing physical activity with mobile devices: a meta-analysis.Comparison of physical activity measures using mobile phone-based CalFit and ActigraphMeasurement of rotational deformity: using a smartphone application is more accurate than conventional methods.Measuring and influencing physical activity with smartphone technology: a systematic review.Fusion of smartphone motion sensors for physical activity recognition.Better physical activity classification using smartphone acceleration sensor.Automatic classification of the sub-techniques (gears) used in cross-country ski skating employing a mobile phoneBehavioral functionality of mobile apps in health interventions: a systematic review of the literature.Recognizing the Operating Hand and the Hand-Changing Process for User Interface Adjustment on SmartphonesExercise Performance Measurement with Smartphone Embedded Sensor for Well-Being Management.A feasibility study on smartphone accelerometer-based recognition of household activities and influence of smartphone position.Behavior Change with Fitness Technology in Sedentary Adults: A Review of the Evidence for Increasing Physical Activity.Activity Recognition and Semantic Description for Indoor Mobile Localization.Use of Machine Learning Classifiers and Sensor Data to Detect Neurological Deficit in Stroke Patients.Just a fad? Gamification in health and fitness appsSleep Quality Prediction From Wearable Data Using Deep LearningMobile Phone and Web 2.0 Technologies for Weight Management: A Systematic Scoping Review.Diet and Physical Activity Apps: Perceived Effectiveness by App Users.A Comparison Study of Classifier Algorithms for Cross-Person Physical Activity Recognition.Technical and clinical view on ambulatory assessment in Parkinson's disease.Estimation of temporal gait parameters using Bayesian models on acceleration signals.An accumulated activity effective index for promoting physical activity: a design and development study in a mobile and pervasive health contextDetection of American Football Head Impacts Using Biomechanical Features and Support Vector Machine Classification.Physical activity awareness of European adolescents: The HELENA study.A systematic literature review of reviews on techniques for physical activity measurement in adults: a DEDIPAC study.Utility of the iPhone 4 Gyroscope Application in the Measurement of Wrist Motion.Activity Recognition in Individuals Walking With Assistive Devices: The Benefits of Device-Specific ModelsTheories of behaviour change and personalised feedback interventions for college student drinkingHuman Activity Recognition Using Recurrent Neural Networks
P2860
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P2860
Classification accuracies of physical activities using smartphone motion sensors.
description
2012 nî lūn-bûn
@nan
2012 թուականի Հոկտեմբերին հրատարակուած գիտական յօդուած
@hyw
2012 թվականի հոտեմբերին հրատարակված գիտական հոդված
@hy
2012年の論文
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2012年学术文章
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2012年学术文章
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2012年学术文章
@zh-hans
2012年学术文章
@zh-my
2012年学术文章
@zh-sg
2012年學術文章
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name
Classification accuracies of physical activities using smartphone motion sensors.
@ast
Classification accuracies of physical activities using smartphone motion sensors.
@en
type
label
Classification accuracies of physical activities using smartphone motion sensors.
@ast
Classification accuracies of physical activities using smartphone motion sensors.
@en
prefLabel
Classification accuracies of physical activities using smartphone motion sensors.
@ast
Classification accuracies of physical activities using smartphone motion sensors.
@en
P2093
P2860
P356
P1476
Classification accuracies of physical activities using smartphone motion sensors.
@en
P2093
Carlyn Peterson
Sanjoy Dasgupta
P2860
P356
10.2196/JMIR.2208
P577
2012-10-05T00:00:00Z