DNN-3 (Trainable Activations)
Reported on 3 benchmarks across 1 task
Note: results are matched by exact model name. Different papers may use the same name for different model variants.
Computer Vision3 results
- Accuracy97best: 99.87 (Branching/Merging CNN + Homogeneous Vector Capsules)
- Percentage error3best: 0.13 (Branching/Merging CNN + Homogeneous Vector Capsules)
- Trainable Parameters386719best: 1882602 (Neural Architecture Search (NAS)-enabled Convolutional Neural Network (CNN))