: Includes a flat list of 10,000 images and a val_annotations.txt file that maps each image to its correct class for validation purposes.
: Maps those WordNet IDs to human-readable labels (e.g., "n02124075" becomes "Egyptian cat").
Adding dataset Tiny-Imagenet · Issue #6127 · pytorch/vision - GitHub COLLECTION PICS 200zip
200 distinct categories (e.g., animals, vehicles, everyday objects). Image Resolution: pixels (full-color JPEG format). Data Split: Training: 100,000 images (500 per class). Validation: 10,000 images (50 per class). Test: 10,000 images (unlabeled). Implementation Details
: Organized into 200 subdirectories, each containing 500 images for that specific class. : Includes a flat list of 10,000 images
For Python users, this dataset is commonly loaded using libraries like or TensorFlow via torchvision.datasets or tensorflow_datasets .
: Contains the WordNet IDs (unique identifiers) for the 200 classes. Image Resolution: pixels (full-color JPEG format)
When working with the tiny-imagenet-200.zip file, developers typically use a custom data loader to handle the folder structure. Below is a conceptual breakdown of the typical file organization: