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Journal of NeuroEngineering and Rehabilitation 2016-Jan

Evaluation of a smartphone human activity recognition application with able-bodied and stroke participants.

רק משתמשים רשומים יכולים לתרגם מאמרים
התחבר הרשם
הקישור נשמר בלוח
N A Capela
E D Lemaire
N Baddour
M Rudolf
N Goljar
H Burger

מילות מפתח

תַקצִיר

BACKGROUND

Mobile health monitoring using wearable sensors is a growing area of interest. As the world's population ages and locomotor capabilities decrease, the ability to report on a person's mobility activities outside a hospital setting becomes a valuable tool for clinical decision-making and evaluating healthcare interventions. Smartphones are omnipresent in society and offer convenient and suitable sensors for mobility monitoring applications. To enhance our understanding of human activity recognition (HAR) system performance for able-bodied and populations with gait deviations, this research evaluated a custom smartphone-based HAR classifier on fifteen able-bodied participants and fifteen participants who suffered a stroke.

METHODS

Participants performed a consecutive series of mobility tasks and daily living activities while wearing a BlackBerry Z10 smartphone on their waist to collect accelerometer and gyroscope data. Five features were derived from the sensor data and used to classify participant activities (decision tree). Sensitivity, specificity and F-scores were calculated to evaluate HAR classifier performance.

RESULTS

The classifier performed well for both populations when differentiating mobile from immobile states (F-score > 94 %). As activity recognition complexity increased, HAR system sensitivity and specificity decreased for the stroke population, particularly when using information derived from participant posture to make classification decisions.

CONCLUSIONS

Human activity recognition using a smartphone based system can be accomplished for both able-bodied and stroke populations; however, an increase in activity classification complexity leads to a decrease in HAR performance with a stroke population. The study results can be used to guide smartphone HAR system development for populations with differing movement characteristics.

הצטרפו לדף הפייסבוק שלנו

המאגר השלם ביותר של צמחי מרפא המגובה על ידי המדע

  • עובד ב 55 שפות
  • מרפא צמחי מרפא מגובה על ידי מדע
  • זיהוי עשבי תיבול על ידי דימוי
  • מפת GPS אינטראקטיבית - תייגו עשבי תיבול במיקום (בקרוב)
  • קרא פרסומים מדעיים הקשורים לחיפוש שלך
  • חפש עשבי מרפא על פי השפעותיהם
  • ארגן את תחומי העניין שלך והתעדכן במחקר החדשות, הניסויים הקליניים והפטנטים

הקלד סימפטום או מחלה וקרא על צמחי מרפא שעשויים לעזור, הקלד עשב וראה מחלות ותסמינים שהוא משמש נגד.
* כל המידע מבוסס על מחקר מדעי שפורסם

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