sportify-dataset10 Dataset

v1

2024-07-02 8:52am

Generated on Jul 2, 2024

Popular Download Formats

Pascal VOC XML
Common XML annotation format for local data munging (pioneered by ImageNet).
PaliGemma
PaliGemma JSONL format used for fine-tuning PaliGemma, Google's open multimodal vision model.
CreateML JSON
CreateML JSON format is used with Apple's CreateML and Turi Create tools.
Other Formats
Choose another format.

Dataset Split

Train Set 87%
15867Images
Valid Set 11%
1946Images
Test Set 3%
517Images

Preprocessing

Auto-Orient: Applied
Resize: Stretch to 640x640
Auto-Adjust Contrast: Using Contrast Stretching
Grayscale: Applied
Filter Null: Require at least 94% of images to contain annotations.

Augmentations

Outputs per training example: 3
Flip: Horizontal, Vertical
Rotation: Between -15° and +15°
Brightness: Between -15% and +15%
Exposure: Between -10% and +10%
Blur: Up to 2px
Noise: Up to 1.33% of pixels
player-ball-fastball-9kNN-J1Wq
8169 images
player-ball-fastball-9kNN-J1Wq-CwGE
4186 images
player-ball-fastball-9kNN-J1Wq-CwGE-jesS
4186 images
player-ball-fastball-9kNN
1845 images
players-and-soccer-ball
854 images