Image Retrieval On Cars196
Metrics
R@1
Results
Performance results of various models on this benchmark
Model Name | R@1 | Paper Title | Repository |
---|---|---|---|
ProxyNCA++ | 90.1 | ProxyNCA++: Revisiting and Revitalizing Proxy Neighborhood Component Analysis | - |
MES-Loss | 87.89 | MES-Loss: Mutually equidistant separation metric learning loss function | - |
Margin | 86.9 | Sampling Matters in Deep Embedding Learning | - |
MS512 | 84.1 | Multi-Similarity Loss with General Pair Weighting for Deep Metric Learning | - |
HTL | 81.4 | Deep Metric Learning with Hierarchical Triplet Loss | - |
EPSHN512 | 82.7 | Improved Embeddings with Easy Positive Triplet Mining | - |
NormSoftmax2048 (ResNet-50) | 89.3 | Classification is a Strong Baseline for Deep Metric Learning | - |
CGD (MG/SG) | 94.8 | Combination of Multiple Global Descriptors for Image Retrieval | - |
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