Fast EMD for Python: a wrapper for Pele and Werman's C++ implementation of the Earth Mover's Distance metric
-
Updated
Feb 27, 2023 - C++
Fast EMD for Python: a wrapper for Pele and Werman's C++ implementation of the Earth Mover's Distance metric
Morphing and Sampling Network for Dense Point Cloud Completion (AAAI2020)
Code for CVPR 2022 https://arxiv.org/abs/2112.04016 DeepFace-EMD Re-ranking Using Patch-wise Earth Movers Distance Improves Out-Of-Distribution Face Identification
Measure the distance between two spectra/signals using optimal transport and related metrics
Compact Matlab code for the computation of the 1- and 2-Wasserstein distances in 1D
A materials discovery algorithm geared towards exploring high-performance candidates in new chemical spaces.
Play, learn, solve, and analyze No-Limit Texas Hold Em. Implementation follows from Monte Carlo counter-factual regret minimization over with hierarchical K-means imperfect recall abstractions.
An implementation of Squared Earth-Mover's Distance loss for Neural Networks.
PyTorch code for ACL 2022 paper: RoMe: A Robust Metric for Evaluating Natural Language Generation https://aclanthology.org/2022.acl-long.387/
Earth-movers distance based graph distance metric for financial statements.
Jupyter notebook for my research in Document Similarity.
Calculating Pairwise Similarity of Polymer Ensembles via Earth Mover’s Distance
Pillars is a library that contains fast algorithms for Python implemented in Rust.
Autoencoder dimensionality reduction, EMD-Manhattan metrics comparison and classifier based clustering on MNIST dataset
Comparison of multiple methods for calculating MNIST hand-written digits similarity.
3 part project: A. bottleneck autoencoder, B. manhattan distance, C. earth mover's distance
PyTorch Wrapper for Earth-Mover-Distance (EMD) for 3D point cloud regression
Reducing MNIST image data dimensionality by extracting the latent space representations of an Autoencoder model. Comparing these latent space representations to the default MNIST representation
Add a description, image, and links to the earth-movers-distance topic page so that developers can more easily learn about it.
To associate your repository with the earth-movers-distance topic, visit your repo's landing page and select "manage topics."