HyperAI超神经

Few Shot Image Classification On Fc100 5 Way

评估指标

Accuracy

评测结果

各个模型在此基准测试上的表现结果

比较表格
模型名称Accuracy
task-augmentation-by-rotating-for-meta49.77
bridging-multi-task-learning-and-meta42.4
rethinking-generalization-in-few-shot-147.68
sparse-spatial-transformers-for-few-shot43.72
adaptive-dimension-reduction-and-variational57.27
task-augmentation-by-rotating-for-meta51.35
meta-transfer-learning-for-few-shot-learning45.1
complementing-representation-deficiency-in40.7
exploring-complementary-strengths-of47.76
easy-ensemble-augmented-shot-y-shaped47.94
fast-and-generalized-adaptation-for-few-shot41.6
self-supervised-knowledge-distillation-for46.5
easy-ensemble-augmented-shot-y-shaped54.13
enhancing-few-shot-image-classification44.78
meta-learning-with-differentiable-convex47.2
pseudo-shots-few-shot-learning-with-auxiliary50.57
attribute-surrogates-learning-and-spectral48.27
complementing-representation-deficiency-in41
constellation-nets-for-few-shot-learning43.8
easy-ensemble-augmented-shot-y-shaped48.07
easy-ensemble-augmented-shot-y-shaped54.47
tadam-task-dependent-adaptive-metric-for40.1