LNCS Homepage
ContentsAuthor IndexSearch

Pose Filter Based Hidden-CRF Models for Activity Detection

Prithviraj Banerjee and Ram Nevatia

University of Southern California, Los Angeles, USA

Abstract. Detecting activities which involve a sequence of complex pose and motion changes in unsegmented videos is a challenging task, and common approaches use sequential graphical models to infer the human pose-state in every frame. We propose an alternative model based on detecting the key-poses in a video, where only the temporal positions of a few key-poses are inferred. We also introduce a novel pose summarization algorithm to automatically discover the key-poses of an activity. We learn a detection filter for each key-pose, which along with a bag-of-words root filter are combined in an HCRF model, whose parameters are learned using the latent-SVM optimization. We evaluate the performance of our model for detection on unsegmented videos on four human action datasets, which include challenging crowded scenes with dynamic backgrounds, inter-person occlusions, multi-human interactions and hard-to-detect daily use objects.

Keywords: Activity detection, Key-poses, CRFs, Latent-SVM

LNCS 8690, p. 711 ff.

Full article in PDF | BibTeX


lncs@springer.com
© Springer International Publishing Switzerland 2014