Here are
29 public repositories
matching this topic...
A High-Quality Real Time Upscaler for Anime Video
Updated
Jul 29, 2020
GLSL
Semantic Segmentation Suite in TensorFlow. Implement, train, and test new Semantic Segmentation models easily!
Updated
Jun 30, 2020
Python
XAI - An eXplainability toolbox for machine learning
Updated
Oct 5, 2019
Python
Tensorflow implementation : U-net and FCN with global convolution
Updated
May 16, 2019
Python
The Pytorch implementation of "Location-aware Upsampling for Semantic Segmentation" (LaU)
Updated
Mar 4, 2020
Jupyter Notebook
hq2x scaling algorithm updated to support RGBA
DeepLearningで音楽をアップサンプリングします
Updated
Mar 24, 2018
Python
Checkerboard rendering with Magnum and OpenGL
Anime4K implemented in C# (with explanation)
An implementation of Anime4K in Python.
Updated
Apr 3, 2020
Python
A PyTorch implementation of CARAFE based on ICCV 2019 paper “CARAFE: Content-Aware ReAssembly of FEatures”
Updated
May 21, 2020
Cuda
Implementation of Anime4K in Go.
Native bindings to libsamplerate
Updated
Jul 16, 2020
JavaScript
Applied Statistics and Data Science: Computer vision course
Updated
Mar 23, 2020
Jupyter Notebook
Experimental port of Anime4K to metal
Updated
Oct 13, 2019
Metal
Drone using Fully Convolutional Network
Updated
Jan 23, 2018
Jupyter Notebook
This is an implementation of the CVPR 2017 paper - Deep Koalarization : Image Colorization using deep CNNs and Inception Resnet V2
Updated
Aug 7, 2018
Python
Gaussian/Laplacian Pyramids OpenCV
Customer churn analysis for a telecommunication company
Updated
Oct 28, 2018
Jupyter Notebook
Upsampling Audio from 8khz to 16khz with a Resnet Architecture
Updated
Jun 2, 2017
Python
Upsampling method for an input cloud using mls method of PCL 1.9.1
An implementation of a nodejs service that handles time-series data with downsampling and upsampling operations.
The given python code gives the data modeling and consists the following methods used: 1) Up sampling 2) Down sampling 3) Gridsearch for the selection of optimal combination of parameters 4) Application of Random Forest classifier 5) Dimensionality reduction using PCA
Implementation of FIR filter with time multiplexing and upsampling in Verilog.
Updated
May 25, 2019
Mathematica
Oversample 44.1kHz WAV file to 352.8kHz
Predicting truck sensor failure
Updated
Feb 1, 2019
Jupyter Notebook
Machine Learning Exercise: Exploring the concept of Upsampling / Oversampling and using KNN, Decision Tree and Random Forest to predict Class on Lymphography data from UCI.
Updated
Sep 24, 2019
Jupyter Notebook
This work predicts the buyers and non-buyers on an online shopping platform at a 92.4% accuracy, 89.8% precision and 95.3% recall performance.
Updated
Jun 29, 2020
Jupyter Notebook
Nearly complete submissions for Super Resolution Convolutional Neural Network (SRCNN) algorithm.
Updated
Feb 12, 2020
Python
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