Title :
Fast cascaded action localization in video using frame alignment
Author :
Stoian, Andrei ; Ferecatu, Marin ; Benois-Pineau, Jenny ; Crucianu, Michel
Author_Institution :
CEDRIC-CNAM, Paris, France
Abstract :
Locating human actions in videos is challenging because of the complexity and variability of human motions, as well as of the amount of video data to be searched. We propose a method that detects and locates a set of actions in a video database by taking into account their temporal structure at the frame level. While other methods aggregate frames into action parts, we leverage the complementarity between aggregation and frame level comparison of sequences. Combining these two techniques in a cascade, we aim to address large scale retrieval. Evaluation on popular datasets show state of the art results, as well as efficient detection and low storage requirements.
Keywords :
image motion analysis; video databases; video retrieval; video signal processing; detection requirement; fast cascaded action localization; frame alignment; frame level comparison; human action location; human motion; large scale retrieval; low storage requirement; video database; Abstracts; Action Localization; Cascade; Global Alignment; Time Warp; Tracklets;
Conference_Titel :
Computational Intelligence for Multimedia Understanding (IWCIM), 2014 International Workshop on
Conference_Location :
Paris
DOI :
10.1109/IWCIM.2014.7008792