Paper
19 May 2006 Visual performance-based image enhancement methodology: an investigation of contrast enhancement algorithms
Kelly E. Neriani, Travis J. Herbranson, George A. Reis, Alan R. Pinkus, Charles D. Goodyear
Author Affiliations +
Abstract
While vast numbers of image enhancing algorithms have already been developed, the majority of these algorithms have not been assessed in terms of their visual performance-enhancing effects using militarily relevant scenarios. The goal of this research was to apply a visual performance-based assessment methodology to evaluate six algorithms that were specifically designed to enhance the contrast of digital images. The image enhancing algorithms used in this study included three different histogram equalization algorithms, the Autolevels function, the Recursive Rational Filter technique described in Marsi, Ramponi, and Carrato1 and the multiscale Retinex algorithm described in Rahman, Jobson and Woodell2. The methodology used in the assessment has been developed to acquire objective human visual performance data as a means of evaluating the contrast enhancement algorithms. Objective performance metrics, response time and error rate, were used to compare algorithm enhanced images versus two baseline conditions, original non-enhanced images and contrast-degraded images. Observers completed a visual search task using a spatial-forcedchoice paradigm. Observers searched images for a target (a military vehicle) hidden among foliage and then indicated in which quadrant of the screen the target was located. Response time and percent correct were measured for each observer. Results of the study and future directions are discussed.
© (2006) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Kelly E. Neriani, Travis J. Herbranson, George A. Reis, Alan R. Pinkus, and Charles D. Goodyear "Visual performance-based image enhancement methodology: an investigation of contrast enhancement algorithms", Proc. SPIE 6226, Enhanced and Synthetic Vision 2006, 622606 (19 May 2006); https://doi.org/10.1117/12.666018
Lens.org Logo
CITATIONS
Cited by 1 scholarly publication and 1 patent.
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Image enhancement

Detection and tracking algorithms

Visualization

Image processing

Digital filtering

Algorithm development

Cameras

Back to Top