Publication | Closed Access
Metric Learning from Poses for Temporal Clustering of Human Motion
32
Citations
17
References
2012
Year
Unknown Venue
EngineeringMachine LearningHuman Pose Estimation3D Pose EstimationBiometricsImplicit Semantic DistancesVideo SummarizationVideo InterpretationNatural Language ProcessingKinesiologyImage AnalysisData ScienceData MiningPattern RecognitionMotion CaptureHuman MotionKinematicsRobot LearningHealth SciencesDanceMachine VisionComputer ScienceVideo UnderstandingDeep LearningComputer VisionTemporal ClusteringHuman MovementActivity RecognitionMotion Analysis
Temporal clustering of human motion into semantically meaningful behaviors is a challenging task. While unsupervised methods do well to some extent, the obtained clusters often lack a semantic interpretation. In this paper, we propose to learn what makes a sequence of human poses different from others such that it should be annotated as an action. To this end, we formulate the problem as weakly supervised temporal clustering for an unknown number of clusters. Weak supervision is attained by learning a metric from the implicit semantic distances derived from already annotated databases. Such a metric contains some low-level semantic information that can be used to effectively segment a human motion sequence into distinct actions or behaviors. The main advantage of our approach is that metrics can be successfully used across datasets, making our method a compelling alternative to unsupervised methods. Experiments on publicly available mocap datasets show the effectiveness of our approach.
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