Image Classification On Dtd
Metrics
Accuracy
Results
Performance results of various models on this benchmark
Comparison Table
Model Name | Accuracy |
---|---|
vision-models-are-more-robust-and-fair-when | 80.5 |
self-supervised-learning-by-estimating-twin-1 | 76.6 |
an-evolutionary-approach-to-dynamic | 81.0 |
transboost-improving-the-best-imagenet | 76.49 |
with-a-little-help-from-my-friends-nearest | 75.5 |
radam-texture-recognition-through-randomized-1 | 84.0 |
a-continual-development-methodology-for-large | 82.23 |
bamboo-building-mega-scale-vision-dataset | 81.9 |
task-arithmetic-in-the-tangent-space-improved | 90.0 |
non-binary-deep-transfer-learning-for | 79.79 |
non-binary-deep-transfer-learning-for | 66.8 |