2023
DOI: 10.3390/horticulturae9111213
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An Assessment of Human Inspection and Deep Learning for Defect Identification in Floral Wreaths

Diego Caballero-Ramirez,
Yolanda Baez-Lopez,
Jorge Limon-Romero
et al.

Abstract: Quality assurance through visual inspection plays a pivotal role in agriculture. In recent years, deep learning techniques (DL) have demonstrated promising results in object recognition. Despite this progress, few studies have focused on assessing human visual inspection and DL for defect identification. This study aims to evaluate visual human inspection and the suitability of using DL for defect identification in products of the floriculture industry. We used a sample of defective and correct decorative wrea… Show more

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