Clustered Forward/Deferred renderer with Physically Based Shading, Image Based Lighting and a whole lot of OpenGL.
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Updated
May 29, 2022 - C++
Clustered Forward/Deferred renderer with Physically Based Shading, Image Based Lighting and a whole lot of OpenGL.
Collection of algorithms in multiple programming languages.
Multi-level network clustering based on the Map Equation
Learning M-Way Tree - Web Scale Clustering - EM-tree, K-tree, k-means, TSVQ, repeated k-means, bitwise clustering
Genie: Fast and Robust Hierarchical Clustering with Noise Point Detection - in Python and R
Fast and Efficient Implementation of HDBSCAN in C++ using STL
spatially-constrained clustering in R
LiDAR processing ROS2. Segmentation: "Fast Ground Segmentation for 3D LiDAR Point Cloud Based on Jump-Convolution-Process". Clustering: "Curved-Voxel Clustering for Accurate Segmentation of 3D LiDAR Point Clouds with Real-Time Performance".
Sequential and Parallel(using Open MP and Pthreads) Implementations(c++) of the K Means Clustering Algorithm and visualizing the results for a comparative study of the Speedup and Efficiency achieved in 3 different implementations
SOINN / 聚类 / 无监督聚类 / 快速 / clustering / unsupervised clustering / fast
Autonomous Dynamic Learning Apprentice System
C++ Implementation of the OPTICS algorithm compatible with the Point Cloud Library.
gmm_diag and gmm_full: C++ classes for multi-threaded Gaussian mixture models and Expectation-Maximisation
C++ implementation of a MCMC sampler for the (canonical) SBM
Implementation of EM using K-Means(Gaussian Mixture Model)
A KMeans implemented in C++ with Python bindings and GPU acceleration
This project is an implementation of a two-level genetic algorithm for clustered traveling salesman problem with application in large scale TSPs
DAOC (Deterministic and Agglomerative Overlapping Clustering algorithm): Stable Clustering of Large Networks
A version of the K-Means Algorithm targeting the Capacitated Clustering Problem
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