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Set Locality Sensitive Hashing via Sliced Wasserstein Embedding

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SLOSH

Set Locality Sensitive Hashing via Sliced Wasserstein Embedding

Datasets:

  • Point Cloud MNIST 2d: put downloaded data in /dataset/pointcloud_mnist_2d
  • ModelNet40: put downloaded data in /dataset/modelnet
  • Oxford 5K: put the extracted 8-dimensional features train_test_AE8.pkl in /dataset/oxford/

Baselines:

  • WE: Wasserstein Embedding
  • FSPool: Featurewise Sort Pooling.
  • Cov: Covariance Pooling.
  • GeM-1: Generalized-Mean Pooling for power=1(average pooling).
  • GeM-2: Generalized-Mean Pooling for power=2.
  • GeM-4: Generalized-Mean Pooling for power=4.

Code:

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