Research Database

9 results for "Machine Learning"


Machine Learning for Activity Recognition: Hip versus Wrist Data

  • Presented on June 18, 2013

Introduction: Wrist-worn accelerometers are convenient to wear and are associated with greater compliance. However, validated algorithms for predicting activity type and/or energy expenditure from wrist-worn accelerometer data are lacking. Purpose: To compare the activity recognition rates of an activity classifier trained on raw tri-axial acceleration signal (30 Hz) collected on ...


Prediction of activity type in preschool children using machine learning techniques

  • Published on June 24, 2014

Objectives: Recent research has shown that machine learning techniques can accurately predict activity classes from accelerometer data in adolescents and adults. The purpose of this study is to develop and test machine learning models for predicting activity type in preschool-aged children. Design: Participants completed 12 standardised activity trials (TV, reading, tablet ...


Predicting human movement with multiple accelerometers using movelets

  • Published on Sept. 2014

Purpose: The study aims were 1) to develop transparent algorithms that use short segments of training data for predicting activity types and 2) to compare the prediction performance of the proposed algorithms using single accelerometers and multiple accelerometers. Methods: Sixteen participants (age, 80.6 yr (4.8 yr); body mass index, 26.1 kg·m (2.5 kg·m)) performed 15 ...


Classification of Cardiovascular Risk Using Accelerometer Data and Machine Learning Algorithms

  • Presented on May 30, 2014

Background: Physical activity patterns captured by accelerometers have been used to classify activity type with machine learning (ML) algorithms. ML may also be applied to accelerometer data for predicting cardiovascular (CV) health risk directly. Decision trees are efficient constructive search algorithms that develop rules for categorizing the data based ...


Development of Activity Type Classification Algorithms in Older Adults from Laboratory and Free-living Data

  • Presented on May 30, 2014

Purpose: To compare activity type recognition rates of machine learning algorithms trained on laboratory versus free-living accelerometer data in free-living older adults. Methods: Thirty-seven older adults (21F and 14M ; 70.8 ± 4.9 y) performed selected activities (total of 35 min) in the lab while wearing three ActiGraph GT3X+ activity monitors (dominant hip, wrist, ...


Comparison of Raw Acceleration from the GENEA and ActiGraph™ GT3X+ Activity Monitors

  • Published on Oct. 30, 2013

Purpose To compare raw acceleration output of the ActiGraph™ GT3X+ and GENEA activity monitors. Methods A GT3X+ and GENEA were oscillated in an orbital shaker at frequencies ranging from 0.7 to 4.0 Hz (ten 2-min trials/frequency) on a fixed radius of 5.08 cm. Additionally, 10 participants (age = 23.8 ± 5.4 years) wore the GT3...



Predicting Activity Type from Accelerometer Data in Older Adults

  • Presented on June 17, 2013

Introduction Assessing time spent in different activity types may be important for early detection of mobility limitations in older adults. To date, accelerometer-based activity type prediction using machine learning algorithms have not been validated for this segment of the population. Therefore, the aim of this study was to use Random ...