TY - GEN
T1 - Conditional models for contextual human motion Recognition
AU - Sminchbescu, Cristian
AU - Kanaujia, Atul
AU - Li, Zhiguo
AU - Metaxas, Dimitris
N1 - Funding Information:
The authors acknowledge the support of Zhiguo Li with experiments and preparing the database and thank the anonymous reviewers for valuable comments. Cristian Sminchisescu gives special thanks to Allan Jepson at the University of Toronto, for many insightful discussions and feedback on the topics presented in this paper. C.S. has been partly funded by NSF Grant IIS-0535140.
PY - 2005
Y1 - 2005
N2 - We present algorithms for recognizing human motion In monocular video sequences, based on discriminative Conditional Random Field (CRF) and Maximum Entropy Markov Models (MEMM). Existing approaches to this problem typically use generative (joint) structures like the Hidden Markov Model (HMM). Therefore they have to make simplifying, often unrealistic assumptions on the conditional Independence of observations given the motion class labels and cannot accommodate overlapping features or long term contextual dependencies In the observation sequence. In contrast, conditional models like the CRFs seamlessly represent contextual dependencies, support efficient, exact Inference using dynamic programming, and their parameters can be trained using convex optimization. We Introduce conditional graphical models as complementary tools for human motion recognition and present an extensive set of experiments that show how these typically outperform HMMs in classifying not only diverse human activities like walking, jumping, running, picking or dancing, but also for discriminating among subtle motion styles like normal walk and wander walk.
AB - We present algorithms for recognizing human motion In monocular video sequences, based on discriminative Conditional Random Field (CRF) and Maximum Entropy Markov Models (MEMM). Existing approaches to this problem typically use generative (joint) structures like the Hidden Markov Model (HMM). Therefore they have to make simplifying, often unrealistic assumptions on the conditional Independence of observations given the motion class labels and cannot accommodate overlapping features or long term contextual dependencies In the observation sequence. In contrast, conditional models like the CRFs seamlessly represent contextual dependencies, support efficient, exact Inference using dynamic programming, and their parameters can be trained using convex optimization. We Introduce conditional graphical models as complementary tools for human motion recognition and present an extensive set of experiments that show how these typically outperform HMMs in classifying not only diverse human activities like walking, jumping, running, picking or dancing, but also for discriminating among subtle motion styles like normal walk and wander walk.
KW - Conditional models
KW - Discriminative models
KW - Feature selection
KW - Hidden Markov Models
KW - Human motion recognition
KW - Markov random fields
KW - Multlclass logistic regression
KW - Optimization
UR - https://www.scopus.com/pages/publications/33745893539
UR - https://www.scopus.com/pages/publications/33745893539#tab=citedBy
U2 - 10.1109/ICCV.2005.59
DO - 10.1109/ICCV.2005.59
M3 - Conference contribution
AN - SCOPUS:33745893539
SN - 076952334X
SN - 9780769523347
T3 - Proceedings of the IEEE International Conference on Computer Vision
SP - 1808
EP - 1815
BT - Proceedings - 10th IEEE International Conference on Computer Vision, ICCV 2005
T2 - Proceedings - 10th IEEE International Conference on Computer Vision, ICCV 2005
Y2 - 17 October 2005 through 20 October 2005
ER -