Litcius/Paper detail

Dynamic Physical Activity Recommendation Delivered through a Mobile Fitness App: A Deep Learning Approach

V. Subramaniyaswamy, V. Vijayakumar, Deepthi Srinivasan, Varshini Balaganesh, Srijith Bharadwaj Damerla, Bhuvaneswari Swaminathan, Logesh Ravi

2022Axioms18 citationsDOIOpen Access PDF

Abstract

Regular physical activity has a positive impact on our physical and mental health. Adhering to a fixed physical activity regimen is essential for good health and mental wellbeing. Today, fitness trackers and smartphone applications are used to promote physical activity. These applications use step counts recorded by accelerometers to estimate physical activity. In this research, we performed a two-level clustering on a dataset based on individuals’ physical and physiological features, as well as past daily activity patterns. The proposed model exploits the user data with partial or complete features. To include the user with partial features, we trained the proposed model with the data of users who possess exclusive features. Additionally, we classified the users into several clusters to produce more accurate results for the users. This enables the proposed system to provide data-driven and personalized activity planning recommendations every day. A personalized physical activity plan is generated on the basis of hourly patterns for users according to their adherence and past recommended activity plans. Customization of activity plans can be achieved according to the user’s historical activity habits and current activity objective, as well as the likelihood of sticking to the plan. The proposed physical activity recommendation system was evaluated in real time, and the results demonstrated the improved performance over existing baselines.

Topics & Concepts

PersonalizationComputer sciencePhysical activityActivity recognitionCluster analysisActivity trackerPlan (archaeology)BitTorrent trackerExploitHuman–computer interactionMachine learningData miningArtificial intelligenceWorld Wide WebMedicinePhysical medicine and rehabilitationComputer securityHistoryArchaeologyEye trackingPhysical Activity and HealthMobile Health and mHealth ApplicationsContext-Aware Activity Recognition Systems