Real-Time Intelligent Vegetable Grading Using YOLOv12
暫譯: 基於YOLOv12的即時智能蔬菜分級

G. a., Senthil, J, Gowrisankar, S. K., Ajaykumar

商品描述

The project focuses on developing a real-time vegetable freshness and quality grading system using advanced deep learning and computer vision techniques. By integrating the YOLOv12 object detection model with Convolutional Neural Networks (CNN), the system can accurately identify vegetables and classify them based on their freshness and quality levels. The approach leverages image processing methods to extract important features such as color, texture, and surface defects, enabling efficient grading without human intervention. This automated system improves speed, consistency, and accuracy compared to traditional manual methods, making it highly suitable for modern smart agriculture and supply chain applications. Ultimately, the proposed solution contributes to reducing food waste, enhancing quality control, and supporting sustainable agricultural practices.

商品描述(中文翻譯)

該專案專注於開發一個即時蔬菜新鮮度和品質分級系統,使用先進的深度學習和計算機視覺技術。通過將 YOLOv12 物件檢測模型與卷積神經網絡 (CNN) 整合,該系統能夠準確識別蔬菜並根據其新鮮度和品質水平進行分類。這種方法利用影像處理技術提取重要特徵,如顏色、質地和表面缺陷,實現無需人工干預的高效分級。與傳統手動方法相比,這個自動化系統在速度、一致性和準確性上都有所提升,非常適合現代智慧農業和供應鏈應用。最終,所提出的解決方案有助於減少食物浪費、提升品質控制,並支持可持續農業實踐。

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