See this document in CiteSeerX!

Tracking Non-Rigid Objects Using Functional Distance Metric  (Make Corrections)  
Pavel Laskov, Chandra Kambhamettu



  Home/Search   Context   Related

 
View or download:
iiit.ac.in/research/cvit/icv...V56.pdf
Cached:  PDF   PS.gz  PS  Image  Update  Help

From:  iiit.ac.in/research/cvit...papers (more)
(Enter author homepages)

Rate this article: (best)
  Comment on this article  
(Enter summary)

Abstract: A novel method for tracking non-rigid objectsispresented. The method is based on the functional representation of objects and is applicable to problems of any dimensionality. This representation can bereconstructed by multi-dimensional non-linear regression. When the metric is defined on the functional representation of objects, the tracking step can beperformedby selecting the closest candidate representation. Apractical algorithm using the Support Vector Regression is presented which... (Update)

Active bibliography (related documents):   More   All
0.6:   Tracking Non-Rigid Objects Using Functional Distance Metric - Laskov, Kambhamettu   (Correct)
0.2:   Extensions of Differential-Geometric Algorithms for Estimation of .. - Laskov (2001)   (Correct)
0.1:   The Use of Zoom within Active Vision - Hayman (2000)   (Correct)

Similar documents based on text:
0.0:   Unknown -   (Correct)

BibTeX entry:   (Update)

@misc{ laskov-tracking,
  author = "Pavel Laskov and Chandra Kambhamettu",
  title = "Tracking Non-Rigid Objects Using Functional Distance Metric",
  url = "citeseer.ist.psu.edu/739818.html" }
Citations (may not include all citations):
1386   Snakes: active contour models (context) - Kass, Witkin et al. - 1987
947   Statistical Learning Theory (context) - Vapnik - 1999
269   Feature extraction from faces using deformable templates (context) - Yuille, Cohen et al. - 1992
247   Contour tracking bystochastic propagation of conditional den.. - Isard, Blake - 1996
135   Active Vision (context) - Blake, Yuille - 1992
111   Tracking with Kalman snakes (context) - Terzopoulos, Szeliski
102   ICondensation: unifying low-level and high-level tracking in.. - Isard, Blake - 1998
102   A tutorial on support vector regression - Smola, Scholkopf - 1998
60   Recognizing facial expressions in image sequences using loca.. - Black, Yacoob - 1997
58   Active blobs - Sclaroff, Isidoro - 1998
57   Making large-scale support vector machine learning practical - Joachims - 1999
54   The dynamic analysis of apparent contours (context) - Cipolla, Blake - 1990
32   Analysis of facial images using physical and anatomical mode.. (context) - Terzopoulos, Waters - 1990
30   Deformable model-based shape and motion analysis from images.. (context) - DeCarlo, Metaxas - 1998
18   modeling and tracking of human lip motions (context) - Basu, Oliver et al. - 1998
15   On improving eye feature extraction using deformable templat.. (context) - Xie, Sudhakar et al. - 1994
11   An improved decomposition algorithm for regression support v.. - Laskov - 2000
10   Tracking nonrigid 3D objects (context) - Terzopoulos, Szeliski
8   Parallel implementation of lagrangian dynamics for real-time.. (context) - Curwen, Andrew et al. - 1991

Documents on the same site (http://iiit.ac.in/research/cvit/icvgip00/papers.htm):   More
Strip Based Embedded Coding of Wavelet Coefficients for.. - Bhattar, Ramakrishnan.. (2000)   (Correct)
Score Aggregation from Multiple Sources and Training in.. - Madhvanath, Govindaraju   (Correct)
Applications of Virtual Reality in Surgery - Pednekar, Kakadiaris (2000)   (Correct)

Online articles have much greater impact   More about CiteSeer.IST   Add search form to your site   Submit documents   Feedback  

CiteSeer.IST - Copyright Penn State and NEC