A Statistical, Nonparametric Methodology for Document Degradation Model Validation
Abstract
Printing, photocopying and scanning processes degrade the image quality of a document. Statistical models of these degradation processes are crucial for document image understanding research. Models allow us to predict system performance; conduct controlled experiments to study the break-down points of the systems; create large multi-lingual data sets with ground truth for training classifiers; design optimal noise removal algorithms; choose values for the free parameters of the algorithms; and so on. Although research in document understanding started many decades ago, only two document degradation models have been proposed this far. Furthermore, no attempts have been to statistically validate these models. In this paper we present a statistical methodology that can be used to validate local degradation models. This method is based on a non-parametric, two-sample permutation test. Another standard statistical device - the power function - is then used to choose between algorithm variables such as distance functions. Since the validation and the power function procedures are independent of the model, they can be used to validate any other degradation model. A method for comparing any two models is also described. It uses p-values associated with the estimated models to select the model that is closer to the real world.
Document Details
- Document Type
- Technical Report
- Publication Date
- Jan 01, 1999
- Accession Number
- ADA458671
Entities
People
- David Madigan
- Henry Baird
- Robert Haralick
- Tapas Kanungo
- Werner Stuezle
Organizations
- University of Maryland