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Human action categorization using conditional random field

conference contribution
posted on 2011-01-01, 00:00 authored by Jin Wang, P Liu, Fenghua She, H Liu
Automatic human action recognition has been a challenging issue in the field of machine vision. Some high-level features such as SIFT, although with promising performance for action recognition, are computationally complex to some extent. To deal with this problem, we construct the features based on the Distance Transform of body contours, which is relatively simple and computationally efficient, to represent human action in the video. After extracting the features from videos, we adopt the Conditional Random Field for modeling the temporal action sequences. The proposed method is tested with an available standard dataset. We also testify the robustness of our method on various realistic conditions, such as body occlusion or intersection.

History

Event

IEEE Workshop on Robotic Intelligence in Informationally Structured Space (2011 : Paris, France)

Pagination

1 - 5

Publisher

IEEE

Location

Paris, France

Place of publication

[Paris, France]

Start date

2011-04-11

End date

2011-04-15

ISBN-13

9781424498857

ISBN-10

1424498856

Language

eng

Publication classification

E2 Full written paper - non-refereed / Abstract reviewed

Copyright notice

2011, IEEE

Title of proceedings

RiiSS 2011 : Proceedings of the 2011 IEEE Workshop on Robotic Intelligence in Informationally Structured Space

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