Edge Impulse Experts / xG24 Card colour sorting Public

Training settings

Please provide a valid number of training cycles (numeric only)
Please provide a valid number for the learning rate (between 0 and 1)
Please provide a valid training processor option

Augmentation settings

Advanced training settings

Neural network architecture

import math, requests
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Input layer (27,648 features)
MobileNetV1 96x96 0.25 (final layer: 32 neurons, 0.01 dropout)
Output layer (4 classes)

Model

Model version: