1. Efficient in Object Detection
1-1. Model Scaling
- Width scaling
- Depth scaling
- Resolution Scaling
๐Can we scale up a model to gain better accuracy and efficiency?
โ There is an optimal way to scale up width, depth and resolution.
2. EfficientNet
- The need for fast and small models $\uparrow$
- Most models trade-off efficiency and accuracy (MobileNets, SqueezeNets)
- EfficientNet gains efficiency in big SOTA models by optimizing scaling up
2-1. Scale up
- Width scaling
- Wide networks catch fine features and are easier to train
- But are week at catching high level features

- Depth scaling
- Deep networks catch high-level features well and are good at generalization
- But gradient vanishing problem makes them harder to train

- Resolution scaling
- Good at catching fine features

2-2. Accuracy & Efficiency


- The growing rate of accuracy decreases if we keep scaling up by one factor