Title :
Large-scale simulation studies in image pattern recognition
Author :
Ho, Tin Kam ; Baird, Henry S.
Author_Institution :
Bell Labs., Lucent Technol., Murray Hill, NJ, USA
fDate :
10/1/1997 12:00:00 AM
Abstract :
Many obstacles to progress in image pattern recognition result from the fact that per-class distributions are often too irregular to be well-approximated by simple analytical functions. Simulation studies offer one way to circumvent these obstacles. We present three closely related studies of machine-printed character recognition that rely on synthetic data generated pseudo-randomly in accordance with an explicit stochastic model of document image degradations. The unusually large scale of experiments - involving several million samples that makes this methodology possible have allowed us to compute sharp estimates of the intrinsic difficulty (Bayes risk) of concrete image recognition problems, as well as the asymptotic accuracy and domain of competency of classifiers
Keywords :
decision theory; document image processing; optical character recognition; pattern classification; simulation; Bayes risk; asymptotic accuracy; character recognition; decision trees; document image analysis; image detection model; image pattern recognition; large-scale simulation; stochastic model; Character generation; Character recognition; Concrete; Degradation; Image analysis; Image recognition; Large-scale systems; Pattern analysis; Pattern recognition; Stochastic processes;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on