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This project unveils an innovative AI Yield Phenotyping Framework, revolutionising fruit classification and grading. Overcoming uniform fruit traits, it integrates advanced technologies like Computer Vision, achieving precision in real-time, non-destructive fruit segmentation, and grading, marking a breakthrough in agricultural technology

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sayantansikdar/fruit-grading-and-classification

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Deep Neural Network Based Yield Phenotyping Framework: Fruit Grading and Classification

🌟 Project Overview: Instigates an AI-based Yield Phenotyping Framework for fruit classification and grading.

🍎 Fruit Characteristics: Focuses on homogeneity in color, shape, and size. Addresses challenges in grading and segmentation due to these uniform qualities.

🎯 Primary Objective: Establishes a real-time, non-destructive system for automating fruit segmentation, grading, and classification.

📊 Datasets and Analysis: Utilizes two different datasets. Conducts a detailed analysis of deep learning models: AlexNet and ResNet.

🍇 Fruit Diversity: Incorporates various fruit types into the prototype. Records videos of each fruit and sends them to a local server.

🤖 Deep Learning Models: Predict fruit grades. Conveyor belt system sorts fruits into baskets based on their grade.

🖼️ Image Preprocessing: Applies techniques to precisely isolate fruits in each image.

📈 Evaluation Metrics: Considers accuracy, precision, recall, and f1-score to evaluate models.

🚀 Model Performance: ResNet architecture achieves peak accuracy, precision, and recall of 99%.

📑 Research Presentation: Details the prototype’s architecture, methodologies, and experimental results. Provides an automated solution to an existing challenge in Agri-field management.

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This project unveils an innovative AI Yield Phenotyping Framework, revolutionising fruit classification and grading. Overcoming uniform fruit traits, it integrates advanced technologies like Computer Vision, achieving precision in real-time, non-destructive fruit segmentation, and grading, marking a breakthrough in agricultural technology

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