A new approach to aflatoxin detection in chili pepper by machine vision

Computers and Electronics in Agriculture - Tập 87 - Trang 129-141 - 2012
M. Ataş1, Y. Yardimci1, A. Temizel1
1Middle East Technical University, Ankara, Turkey

Tài liệu tham khảo

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