@inproceedings{178e4a44874243a89e034645c8b2b3db,
title = "The development of a line-scan imaging algorithm for the detection of fecal contamination on leafy greens",
abstract = "This paper reports the development of a multispectral algorithm, using the line-scan hyperspectral imaging system, to detect fecal contamination on leafy greens. Fresh bovine feces were applied to the surfaces of washed loose baby spinach leaves. A hyperspectral line-scan imaging system was used to acquire hyperspectral fluorescence images of the contaminated leaves. Hyperspectral image analysis resulted in the selection of the 666 nm and 688 nm wavebands for a multispectral algorithm to rapidly detect feces on leafy greens, by use of the ratio of fluorescence intensities measured at those two wavebands (666 nm over 688 nm). The algorithm successfully distinguished most of the lowly diluted fecal spots (0.05 g feces/ml water and 0.025 g feces/ml water) and some of the highly diluted spots (0.0125 g feces/ml water and 0.00625 g feces/ml water) from the clean spinach leaves. The results showed the potential of the multispectral algorithm with line-scan imaging system for application to automated food processing lines for food safety inspection of leafy green vegetables.",
keywords = "Food safety, Hyperspectral image, Leafy greens, Line scan, Machine vision, Multispectral image",
author = "Yang, {Chun Chieh} and Kim, {Moon S.} and Yung-Kun Chuang and Hoyoung Lee",
year = "2013",
doi = "10.1117/12.2016030",
language = "English",
isbn = "9780819495129",
volume = "8721",
series = "Proceedings of SPIE - The International Society for Optical Engineering",
booktitle = "Sensing for Agriculture and Food Quality and Safety V",
note = "Sensing for Agriculture and Food Quality and Safety V ; Conference date: 30-04-2013 Through 01-05-2013",
}