Title of article :
EVALUATING A SEGMENTATION-RESISTANT CAPTCHA INSPIRED BY THE HUMAN VISUAL SYSTEM MODEL
Author/Authors :
KHAN, I.M. International Islamic Univ. Malaysia (llUM),lalan Gombak - Faculty of Engineering - Electrical and Computer Engineering Department, Malaysia , USHAMA, I.K.M. International Islamic Univ. Malaysia (llUM) - Faculty of Engineering - Electrical and Computer Engineering Department, Malaysia , KHALIFA, O.O. International Islamic Univ. Malaysia (llUM) - Faculty of Engineering - Electrical and Computer Engineering Department, Malaysia
From page :
145
To page :
154
Abstract :
Visual CAPTCHAs are widely used on the Internet today as a means of distinguishing between humans and computers. They help protect servers from being flooded by requests from malicious scripts. However, they are not very secure. Numerous image processing algorithms are able to discern the characters used in the CAPTCHAs. It has been suggested that CAPTCHAs can be made more secure if they are distorted in ways that makes segmentation difficult. However, out of all the reviewed distortions present in current CAPTCHAs there are none that allow for a high level of segmentation difficulty. Furthermore, CAPTCHAs also need to be used by humans who may not find certain distortions tolerable. Thus, the problem of selecting a good distortion becomes a tradeoff between user acceptability and computer solvability. It is hypothesized in this paper that rather than using low-level image distortions, optical distortions based on the Gestalt laws of perception governing human visual system models should be applied. These distortions would ensure widespread user acceptability, and would be very difficult for computers to solve. This paper aims to explore the feasibility of employing Gestalt-inspired distortion in CAPTCHAs by first implementing a CAPTCHA cracker and then evaluating the performance of some manually generated Gestalt CAPTCHA s against some existing CAPTCHAs
Keywords :
CAPTCHA , character recognition , image processing
Journal title :
IIUM Engineering Journal
Journal title :
IIUM Engineering Journal
Record number :
2558196
Link To Document :
بازگشت