作者
Hamed Taheri Gorji, Seyed Mojtaba Shahabi, Akshay Sharma, Lucas Q Tande, Kaylee Husarik, Jianwei Qin, Diane E Chan, Insuck Baek, Moon S Kim, Nicholas MacKinnon, Jeffrey Morrow, Stanislav Sokolov, Alireza Akhbardeh, Fartash Vasefi, Kouhyar Tavakolian
发表日期
2022/2/14
期刊
Scientific Reports
卷号
12
期号
1
页码范围
2392
出版商
Nature Publishing Group UK
简介
Food safety and foodborne diseases are significant global public health concerns. Meat and poultry carcasses can be contaminated by pathogens like E. coli and salmonella, by contact with animal fecal matter and ingesta during slaughter and processing. Since fecal matter and ingesta can host these pathogens, detection, and excision of contaminated regions on meat surfaces is crucial. Fluorescence imaging has proven its potential for the detection of fecal residue but requires expertise to interpret. In order to be used by meat cutters without special training, automated detection is needed. This study used fluorescence imaging and deep learning algorithms to automatically detect and segment areas of fecal matter in carcass images using EfficientNet-B0 to determine which meat surface images showed fecal contamination and then U-Net to precisely segment the areas of contamination. The EfficientNet-B0 model …
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