Building a rule-based machine-vision system for defect inspection on apple sorting and packing lines

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摘要

A near-infrared machine-vision system was developed for automating apple defect inspection. Fast blob extraction from fruit images was performed by using an adaptive spherical transformation. A binary decision-tree-structured rule base was established using blob feature extraction and analysis. Both off-line and on-line test results demonstrated that the rule-based system was effective for apple defect detection. Compared with the neural network method, the rules-based approach had more flexibility for changing or adding parameters, features and rules to meet various sorting requirements. The technique presented in this paper is being commercialized by a leading manufacturer of fruit/vegetable packinghouse equipment.

论文关键词:Machine vision,Infrared,Imaging,Defect,Stem-end,Calyx,Inspection,Fruit

论文评审过程:Available online 18 March 1999.

论文官网地址:https://doi.org/10.1016/S0957-4174(98)00079-7