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OPPO_6G_Data_Generation
Rank 3 : Source code for OPPO 6G Data Generation ChallengeRobust-Classification
CVPR 2022 Workshop Robust Classificationcontent-aware-rotation
Implementation of Kaiming He's Paper Content-Aware Rotation on ICCV 2013IncrementalVHD_GPE
official code for paper: Exploring Domain Incremental Video Highlights Detection with the LiveFood Benchmarkhaze-removal-using-dark-channel-prior-and-guided-filter
haze removal + dark channel prior + guided filterAODNet-Based-Image-Haze-Removal
Single Image Haze Removal Using AODNet in PytorchVisualization-of-sort-algorithms
Selection sort & Heap sort & Quick sort & Merge sort & Insert sort & Shell sort & Bubble sortMoving-Objects-Detection
first we get some samples of background and then classify the moving object and backgroundSimplex-Method
Continually Update Some Optimal Algorithms in Operational Research: e.g. Simplex Method.Genetic-Algorithm-System-with-UI-
This is a system that you can add more algorithms into it. And now, it has GA and a farely beautiful interfaceSpeech-Recognition
We provide some speech materials(Arabic number) and methods to recognize the numberImage-Segmentation
Medical Images Segmentation based on U-netGPE
Global Prototype Encoding for Incremental Video Highlights DetectionFace-Detection
faces and specific faces detectionBAL
Out-of-distribution Detection with Boundary Aware LearningMulti-digit-recognition-based-on-SVM
A multi-digit recognition system based on svm and mnistCertificates
SSOD
official code for paper SSOD (Self-supervised Sampling for Out-of-distribution Detection)huawei_csig_action_recognition
Solution of team DS for HUAWEI CSIG action recognition challengeTranslation-Model
Transformer based language model.Notes-for-Cpp
resnet
SSD
Implementation of SSD300 in Pytorch use ResNet50 Backbone.video_highlights_detection_detr
video highlights detection with transformerMachine_Learning-Classification_Regression_and_Classifier_interpretability
1. Classification with Hyperparameter Search : The idea here is to train and evaluate 8 classification methods across 10 classification datasets. 2. Regression with Hyperparameters Search: The idea here is to train and evaluate 7 regression methods across 10 regression datasets. 3. Classifier interpretability : load and train models on standard computer vision dataset called CIFAR-10 and train a convolutional neural network using PyTorch to classify images in the dataset; train a decision tree to classify images in the dataset; and try to interpret the CNN using the 'activation maximization' technique. 4. Novelty component : Try to introduce a novel aspect to your analysis of classifiers and regressors or to your investigation of interpretability.Love Open Source and this site? Check out how you can help us