100 Google colab's for image processing, pattern recognition and computer vision
by Domingo Mery, Gabriel Garib, Christian Pieringer, Sebastian Pulgar, Javier Tramon
- Basic Image Processing
- Spatial Domain
- Frequency Domain
- Image Restoration
- Morphology
- Segmentation
- Color Processing
- Feature Extraction
- Feature Selection and Transformation
- Classification
- Performance Evaluation
- Clustering
- Image Classification
- Transfer Learning
- Facial Analysis
- Human Analysis
- Object Detection
- Tracking
- Segmentation
- GAN
- Anomaly Detection
-
See Segmentation in Module [ Deep Learning > Segmentation ]
(+) Tested in July, 2023
-
Intensity Features (basic, contrast and Crossing Line Profile) (+)
-
Texture Recognition using LBP, Haralick and Gabor features (+)
-
5-Character Recognition using Sequential Forward Selection (SFS) (+)
-
Basic Feature Selection and Transformation: SFS, Exhaustive Search, PCA, PLSR, ICA, etc. (+)
-
Collection of Methods for Visualization of Feature Space (+)
-
Setting Hyperparameter K of KNN using Validation Dataset (+)
-
See Bag of Visual Words [ Pattern Recognition > Clustering ]
-
See Face Clustering in Module [ Deep Learning > Facial Analysis ]
(+) Tested in July 2023
-
See Epipolar Geometry and Fundamental Matrix [ Multiple View Geometry > Two Views ]
(*) Updated in July-2023, some of them in Spanish
-
Classification of Pedestrians with Bikes (three classes) (+)
-
Classification examples using pre-trained mmodels (ResNet*, VGG*, ShuffleNet*, etc.) (+)
(+) Tested in July, 2023
(+) Tested in July, 2023 (*) There are some version troubles :(
-
See Classification of Pedestrians with Bikes in Module [ Deep Learning > Image Classification ]