A dataset of annotated African plum images from Cameroon for AI-based quality assessmentKaggle

This paper presents a dataset of 4507 annotated images of African plums collected across diverse regions in Cameroon, marking the first dataset specifically designed for AI-driven quality assessment of this fruit.The dataset is categorized borstlist självhäftande into six quality grades: unaffected, bruised, cracked, rotten, spotted, and unripe.These categories represent varying degrees of plum quality, from optimal condition to various defects and ripeness levels.Captured under natural lighting using a consistent smartphone setup, the images were meticulously labeled by agricultural experts, ensuring high annotation accuracy.

This resource is valuable for developing and testing computer vision, deep learning-based recognition systems and object detection models in agriculture, enabling automated evaluation of plum quality for commercialization.By offering a comprehensive, alarecre.com culturally relevant dataset focused on a traditionally underrepresented crop, this work supports advancements in precision agriculture, particularly in developing regions.Potential applications include AI-based tools for real-time sorting, defect detection, and quality assurance in the supply chain.

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