Title :
Data driven image models through continuous joint alignment
Author :
Learned-Miller, Erik G.
Author_Institution :
Dept. of Comput. Sci., Massachusetts Univ., Amherst, MA, USA
Abstract :
This paper presents a family of techniques that we call congealing for modeling image classes from data. The idea is to start with a set of images and make them appear as similar as possible by removing variability along the known axes of variation. This technique can be used to eliminate "nuisance" variables such as affine deformations from handwritten digits or unwanted bias fields from magnetic resonance images. In addition to separating and modeling the latent images - i.e., the images without the nuisance variables - we can model the nuisance variables themselves, leading to factorized generative image models. When nuisance variable distributions are shared between classes, one can share the knowledge learned in one task with another task, leading to efficient learning. We demonstrate this process by building a handwritten digit classifier from just a single example of each class. In addition to applications in handwritten character recognition, we describe in detail the application of bias removal from magnetic resonance images. Unlike previous methods, we use a separate, nonparametric model for the intensity values at each pixel. This allows us to leverage the data from the MR images of different patients to remove bias from each other. Only very weak assumptions are made about the distributions of intensity values in the images. In addition to the digit and MR applications, we discuss a number of other uses of congealing and describe experiments about the robustness and consistency of the method.
Keywords :
computer vision; handwritten character recognition; image resolution; magnetic resonance imaging; nonparametric statistics; bias removal; congealing; continuous joint alignment; data driven image models; handwritten character recognition; handwritten digit classifier; magnetic resonance images; nuisance variables; Biomedical imaging; Character recognition; Computer vision; Entropy; Handwriting recognition; Image generation; Magnetic resonance; Maximum likelihood estimation; Robustness; Statistics; Index Terms- Alignment; artifact removal; bias removal; clustering; congealing; correspondence; density estimation; entropy; magnetic resonance imaging; maximum likelihood; medical imaging; nonparametric statistics; registration; unsupervised learning.; Algorithms; Artificial Intelligence; Automatic Data Processing; Computer Simulation; Documentation; Handwriting; Image Enhancement; Image Interpretation, Computer-Assisted; Information Storage and Retrieval; Models, Theoretical; Pattern Recognition, Automated; Subtraction Technique;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2006.34