Image classification is a supervised learning problem: define a set of target classes (objects to identify in images), and train a model to recognize them using labeled example photos. Using AutoTrain, its super-easy to train a state-of-the-art image classification model. Just upload a set of images, and AutoTrain will automatically train a model to classify them.
The data for image classification must be in zip format, with each class in a separate subfolder. For example, if you want to classify cats and dogs, your zip file should look like this:
cats_and_dogs.zip
├── cats
│ ├── cat.1.jpg
│ ├── cat.2.jpg
│ ├── cat.3.jpg
│ └── ...
└── dogs
├── dog.1.jpg
├── dog.2.jpg
├── dog.3.jpg
└── ...
Some points to keep in mind:
When train.zip is decompressed, it creates two folders: cats and dogs. these are the two categories for classification. The images for both categories are in their respective folders. You can have as many categories as you want.