Integration of the OpenCV Machine Learning library for K-Nearest Neighbours classification of gridded features.
| | Name | Type | Identifier | Description | Constraints |
| Input | Features | Grid list (input) | FEATURES | - | - |
| Training Areas | Shapes (input) | TRAIN_AREAS | - | - |
| Output | Classification | Grid (output) | CLASSES | - | - |
| Options | Grid System | Grid system | PARAMETERS_GRID_SYSTEM | - | - |
| Normalize | Boolean | NORMALIZE | - | Default: 0 |
| Update Colors from Features | Boolean | RGB_COLORS | Use the first three features in list to obtain blue, green, red components for class colour in look-up table. | Default: 1 |
| Load Model | File path | MODEL_LOAD | Use a model previously stored to file. | - |
| Class Identifier | Table field | TRAIN_CLASS | - | - |
| Buffer Size | Floating point | TRAIN_BUFFER | For non-polygon type training areas, creates a buffer with a diameter of specified size. | Minimum: 0.000000 Default: 1.000000 |
| Save Model | File path | MODEL_SAVE | Stores model to file to be used for subsequent classifications instead of training areas. | - |
| Default Number of Neighbours | Integer | NEIGHBOURS | - | Minimum: 1 Default: 3 |
| Training Method | Choice | TRAINING | - | Available Choices: [0] classification [1] regression model Default: 0 |
| Algorithm Type | Choice | ALGORITHM | - | Available Choices: [0] brute force [1] KD Tree Default: 0 |
| Parameter for KD Tree implementation | Integer | EMAX | - | Minimum: 1 Default: 1000 |