Leveraging Hierarchical Parametric Networks for Skeletal Joints Based Action Segmentation and Recognition

Di Wu, Ling Shao

Research output: Contribution to conferencePaper

184 Citations (Scopus)

Abstract

Over the last few years, with the immense popularity of the Kinect, there has been renewed interest in developing methods for human gesture and action recognition from 3D skeletal data. A number of approaches have been proposed to extract representative features from 3D skeletal data, most commonly hard wired geometric or bio-inspired shape context features. We propose a hierarchial dynamic framework that first extracts high level skeletal joints features and then uses the learned representation for estimating emission probability to infer action sequences. Currently gaussian mixture models are the dominant technique for modeling the emission distribution of hidden Markov models. We show that better action recognition using skeletal features can be achieved by replacing gaussian mixture models by deep neural networks that contain many layers of features to predict probability distributions over states of hidden Markov models. The framework can be easily extended to include a ergodic state to segment and recognize actions simultaneously.
Original languageEnglish
DOIs
Publication statusPublished - Jun 2014
EventCVPR 2014 - IEEE Conference on Computer Vision and Pattern Recognition - Columbus, Ohio
Duration: 1 Jun 2014 → …

Conference

ConferenceCVPR 2014 - IEEE Conference on Computer Vision and Pattern Recognition
Period1/06/14 → …

Keywords

  • feature extraction
  • hidden Markov models
  • image motion analysis
  • image recognition
  • image segmentation
  • image sequences

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