학술논문

Pessimal print: a reverse Turing test
Document Type
Conference
Source
Proceedings of Sixth International Conference on Document Analysis and Recognition Document analysis and recognition Document Analysis and Recognition, 2001. Proceedings. Sixth International Conference on. :1154-1158 2001
Subject
Computing and Processing
Signal Processing and Analysis
Testing
Humans
Optical character recognition software
Machine vision
Internet
Artificial intelligence
Degradation
Character recognition
Stochastic processes
Image quality
Language
Abstract
We exploit the gap in ability between human and machine vision systems to craft a family of automatic challenges that tell human and machine users apart via graphical interfaces including Internet browsers. Turing proposed (1950) a method whereby human judges might validate "artificial intelligence" by failing to distinguish between human and machine interlocutors. Stimulated by the "chat room problem", and influenced by the CAPTCHA project of Blum et al. (2000), we propose a variant of the Turing test using pessimal print: that is, low-quality images of machine-printed text synthesized pseudo-randomly over certain ranges of words, typefaces, and image degradations. We show experimentally that judicious choice of these ranges can ensure that the images are legible to human readers but illegible to several of the best present-day optical character recognition (OCR) machines. Our approach is motivated by a decade of research on performance evaluation of OCR machines and on quantitative stochastic models of document image quality. The slow pace of evolution of OCR and other species of machine vision over many decades suggests that pessimal print will defy automated attack for many years. Applications include 'bot' barriers and database rationing.