Vidit Jain, Andras Ferencz and Erik Learned-Miller.
Discriminative Training of Hyper-feature Models for Object Identification.
To appear British Machine Vision Conference (BMVC), 2006.
[pdf]
Jerod Weinman and Erik Learned-Miller.
Improving recognition of novel input with similarity.
In IEEE Conference on Computer Vision and Pattern Recognition (CVPR), to appear, 2006.
[pdf]
Ron Bekkerman, Mehran Sahami and Erik Learned-Miller.
Combinatorial Markov Random Fields.
To appear: European Conference on Machine Learning (ECML) 17, 2006.
[pdf]
While text recognition is considered an "easy" problem by many researchers in
computer vision, there is still no software that can successfully
recognize the full variety of words, as they appear in complex
environments, such as on store fronts, street signs, or movie
marquees.
Behavioral robotics
Recognition from one example
How can I
recognize a person when I have seen only a single picture of that
person before? This is a particularly challenging recognition problem
since the same person has so many variables affecting his or her
appearance. The same person may appear with different facial
expressions, hairstyles, or facial hair. They may be wearing glasses
one day, but not the next. They may go to the beach and get a tan.
We have been developing a method called "hyper-feature" recognition,
originally conceived by Andras Ferencz at UC Berkeley, to solve the
problem of face recognition from one example. Recently, Vidit Jain
at UMass has improved this system using discriminative training
techniques. This work is described in the following paper:
Vidit Jain, Andras Ferencz and Erik Learned-Miller.
Discriminative Training of Hyper-feature Models for Object Identification.
Proceedings of the British Machine Vision Conference (BMVC), Volume 1, pp. 357-366, 2006.
[pdf]