Publication | Closed Access
GymCam
73
Citations
30
References
2018
Year
Fitness TrackingPhysical ActivityEngineeringHuman Pose EstimationAction Recognition (Movement Science)3D Pose EstimationAction Recognition (Computer Vision)Wearable TechnologyPosturePresent GymcamKinesiologyMotion CaptureHuman MotionHealth SciencesVarsity GymMachine VisionPhysical FitnessWorn SensorsComputer ScienceComputer VisionVideo AnalysisHuman MovementActivity RecognitionMotion Analysis
Worn sensors are popular for automatically tracking exercises. However, a wearable is usually attached to one part of the body, tracks only that location, and thus is inadequate for capturing a wide range of exercises, especially when other limbs are involved. Cameras, on the other hand, can fully track a user's body, but suffer from noise and occlusion. We present GymCam, a camera-based system for automatically detecting, recognizing and tracking multiple people and exercises simultaneously in unconstrained environments without any user intervention. We collected data in a varsity gym, correctly segmenting exercises from other activities with an accuracy of 84.6%, recognizing the type of exercise at 93.6% accuracy, and counting the number of repetitions to within ± 1.7 on average. GymCam advances the field of real-time exercise tracking by filling some crucial gaps, such as tracking whole body motion, handling occlusion, and enabling single-point sensing for a multitude of users.
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