flomSStaar / IA-FruitRecognition

Ce projet consiste à développer une intelligence artificielle permettant de classifier des fruits grâce à une photo.

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IA-FruitRecognition

Ce projet consiste à développer une intelligence artificielle permettant de classifier des fruits grâce à une photo.

Lien vers le dataset: https://www.kaggle.com/sshikamaru/fruit-recognition

Dataset

Total number of images: 22495.

Training set size: 16854 images (one fruit or vegetable per image).

Test set size: 5641 images (one fruit or vegetable per image).

Number of classes: 33 (fruits and vegetables).

Image size: 100x100 pixels.

Training data filename format: [fruit/vegetable name][id].jpg (e.g. Apple Braeburn100.jpg). Many images are also rotated, to help training.

Testing data filename format: [4 digit id].jpg (e.g. 0001.jpg)

Content train - the training folder that contains 33 subfolders in which training images for each fruit/vegetable are located. There is a total of 16854 images. test - the testing folder that contains 5641 testing images sampleSubmission.csv - a sample submission file in the correct format, with id number and string label

Bibliothèques utilisés

  • numpy
  • pandas
  • matplotlib
  • sklearn
  • glob
  • os
  • datetime
  • seaborn
  • cv2 (opencv)

About

Ce projet consiste à développer une intelligence artificielle permettant de classifier des fruits grâce à une photo.


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