Paper
26 April 2007 Noninvasive forward-scattering system for rapid detection, characterization, and identification of bacterial colonies
Bartek Rajwa, Bulent Bayraktar, Padmapriya P. Banada, Karleigh Huff, Euiwon Bae, E. Daniel Hirleman, Arun K. Bhunia, J. Paul Robinson
Author Affiliations +
Abstract
Bacterial contamination of food products puts the public at risk and also generates a substantial cost for the food-processing industry. One of the greatest challenges in the response to these incidents is rapid recognition of the bacterial agents involved. Only a few currently available technologies allow testing to be performed outside of specialized microbiological laboratories. Most current systems are based on the use of expensive PCR or antibody-based techniques, and require complicated sample preparation for reliable results. Herein, we report our efforts to develop a noninvasive optical forward-scattering system for rapid, automated identification of bacterial colonies grown on solid surfaces. The presented system employs computer-vision and pattern-recognition techniques to classify scatter patterns produced by bacterial colonies irradiated with laser light. Application of Zernike and Chebyshev moments, as well as Haralick texture descriptors for image feature extraction, allows for a very high recognition rate. An SVM algorithm was used for classification of patterns. Low error rates determined by cross-validation, reproducibility of the measurements, and robustness of the system prove that the proposed technology can be implemented in automated devices for bacterial detection.
© (2007) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Bartek Rajwa, Bulent Bayraktar, Padmapriya P. Banada, Karleigh Huff, Euiwon Bae, E. Daniel Hirleman, Arun K. Bhunia, and J. Paul Robinson "Noninvasive forward-scattering system for rapid detection, characterization, and identification of bacterial colonies", Proc. SPIE 6554, Chemical and Biological Sensing VIII, 65540N (26 April 2007); https://doi.org/10.1117/12.722200
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Pathogens

Laser scattering

Organisms

Computing systems

Bacteria

Detection and tracking algorithms

Feature extraction

Back to Top