- A fruit detection and quality analysis using Convolutional Neural Networks and Image Processing.
- Dataset sources: Imagenet and Kaggle.
- Applied GrabCut Algorithm for background subtraction.
- Applied various transformations to increase the dataset such as scaling, shearing, linear transformations etc.
- Trained the models using Keras and Tensorflow.
- Training accuracy: 94.11% and testing accuracy: 96.4%
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Ayush-bit852/FruitsAndVegetableRecognition
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