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od-defect-crop-perfect-terminals

Object Detection

od-defect-crop-perfect-terminals Image Dataset

v4

2023-10-18 4:43pm

Generated on Oct 18, 2023

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Dataset Split

Train Set 90%
828Images
Valid Set 6%
51Images
Test Set 4%
40Images

Preprocessing

Auto-Orient: Applied

Augmentations

Outputs per training example: 3
Flip: Horizontal
Hue: Between -25° and +25°
Saturation: Between -25% and +25%
Bounding Box: 90° Rotate: Clockwise, Counter-Clockwise
Bounding Box: Rotation: Between -15° and +15°
Bounding Box: Brightness: Between 0% and +12%
Bounding Box: Exposure: Between -25% and +25%
defect-det-on-croped-terminals
367 images
defects_on_terminals
457 images
defects-on-terminals
98 images
defects
98 images
defects_on_pos
98 images