Publication | Closed Access
A decision forest based feature selection framework for action recognition from RGB-depth cameras
17
Citations
6
References
2013
Year
Unknown Venue
EngineeringMachine LearningHuman Pose Estimation3D Pose EstimationDecision ForestAction Recognition FrameworkVideo InterpretationImage AnalysisKinesiologyData ScienceMotion CapturePattern RecognitionHuman MotionRobot LearningKinematicsHealth SciencesMachine VisionFeature Selection FrameworkMotion SynthesisRgb-depth CamerasDeep LearningComputer VisionRandom Decision ForestsHuman MovementActivity RecognitionMotion Analysis
In this paper, we present an action recognition framework leveraging data mining capabilities of random decision forests trained on kinematic features. We describe human motion via a rich collection of kinematic feature time-series computed from the skeletal representation of the body in motion. We discriminatively optimize a random decision forest model over this collection to identify the most effective subset of features, localized both in time and space. Later, we train a support vector machine classifier on the selected features. This approach improves upon the baseline performance obtained using the whole feature set with a significantly less number of features (one tenth of the original). On MSRC-12 dataset (12 classes), our method achieves 94% accuracy. On the WorkoutSU-10 dataset, collected by our group, the accuracy is 98%. The approach can also be used to provide insights on the spatiotemporal dynamics of human actions.
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