Support Vector Machine Classification
| Author(s) | O.Conrad (c) 2016 |
| Library ID | imagery_opencv |
| Tool ID | 7 |
| Version | 1.0 |
| Menu | Imagery | Classification | Machine Learning |
Description
Integration of the OpenCV Machine Learning library for Support Vector Machine classification of gridded features.
References
OpenCV - Open Source Computer Vision
OpenCV - Machine Learning Overview
Change, C.-C. & Lin, C.-J. (2011): Libsvm: a library for support vector machines. ACM Transactions on Intelligent Systems and Technology (TIST), 2(3):27. doi:10.1145/1961189.1961199
Parameters
| | Name | Type | Identifier | Description | Constraints |
| Input | Features | grid list, input | FEATURES | - | - |
| Training Samples | table, input | TRAIN_SAMPLES | Provide a class identifier in the first field followed by sample data corresponding to the input feature grids. | - |
| Training Areas | shapes, input | TRAIN_AREAS | - | - |
| Output | Classification | grid, output | CLASSES | - | - |
| Look-up Table | table, output, optional | CLASSES_LUT | A reference list of the grid values that have been assigned to the training classes. | - |
| Options | Normalize | boolean | NORMALIZE | - | Default: 0 |
| Colors from Features | boolean
[GUI] | RGB_COLORS | Use the first three features in list to obtain blue, green, red components for class colour in look-up table. | Default: 0 |
| Grid System | grid system | GRID_SYSTEM | - | - |
| Training | choice | MODEL_TRAIN | - | Available Choices:
[0] training areas
[1] training samples
[2] load from file
Default: 0 |
| Class Identifier | table field | TRAIN_CLASS | - | - |
| Buffer Size | floating point number | TRAIN_BUFFER | For non-polygon type training areas, creates a buffer with a diameter of specified size. | Minimum: 0.000000
Default: 1.000000 |
| Load Model | file path | MODEL_LOAD | Use a model previously stored to file. | - |
| Save Model | file path | MODEL_SAVE | Stores model to file to be used for subsequent classifications instead of training areas. | - |
| SVM Type | choice | SVM_TYPE | - | Available Choices:
[0] c-support vector classification
[1] nu support vector classification
[2] distribution estimation (one class)
[3] epsilon support vector regression
[4] nu support vector regression
Default: 0 |
| C | floating point number | C | - | Minimum: 0.000000
Default: 5.000000 |
| Nu | floating point number | NU | - | Minimum: 0.000000
Default: 0.500000 |
| P | floating point number | P | - | Minimum: 0.000000
Default: 0.500000 |
| Kernel Type | choice | KERNEL | - | Available Choices:
[0] linear
[1] polynomial
[2] radial basis function
[3] sigmoid
[4] exponential chi2
[5] histogram intersection
Default: 2 |
| Coefficient 0 | floating point number | COEF0 | - | Minimum: 0.000000
Default: 1.000000 |
| Degree | floating point number | DEGREE | - | Minimum: 0.000000
Default: 0.500000 |
| Gamma | floating point number | GAMMA | - | Minimum: 0.000000
Default: 5.000000 |
Command Line
Usage: saga_cmd imagery_opencv 7 [-FEATURES ] [-NORMALIZE ] [-CLASSES ] [-CLASSES_LUT ] [-MODEL_TRAIN ] [-TRAIN_SAMPLES ] [-TRAIN_AREAS ] [-TRAIN_CLASS ] [-TRAIN_BUFFER ] [-MODEL_LOAD ] [-MODEL_SAVE ] [-SVM_TYPE ] [-C ] [-NU ] [-P ] [-KERNEL ] [-COEF0 ] [-DEGREE ] [-GAMMA ]
-FEATURES: Features
grid list, input
-NORMALIZE: Normalize
boolean
Default: 0
-CLASSES: Classification
grid, output
-CLASSES_LUT: Look-up Table
table, output, optional
-MODEL_TRAIN:
Training
choice
Available Choices:
[0] training areas
[1] training samples
[2] load from file
Default: 0
-TRAIN_SAMPLES: Training Samples
table, input
-TRAIN_AREAS: Training Areas
shapes, input
-TRAIN_CLASS: Class Identifier
table field
-TRAIN_BUFFER: Buffer Size
floating point number
Minimum: 0.000000
Default: 1.000000
-MODEL_LOAD: Load Model
file path
-MODEL_SAVE: Save Model
file path
-SVM_TYPE:
SVM Type
choice
Available Choices:
[0] c-support vector classification
[1] nu support vector classification
[2] distribution estimation (one class)
[3] epsilon support vector regression
[4] nu support vector regression
Default: 0
-C: C
floating point number
Minimum: 0.000000
Default: 5.000000
-NU: Nu
floating point number
Minimum: 0.000000
Default: 0.500000
-P: P
floating point number
Minimum: 0.000000
Default: 0.500000
-KERNEL:
Kernel Type
choice
Available Choices:
[0] linear
[1] polynomial
[2] radial basis function
[3] sigmoid
[4] exponential chi2
[5] histogram intersection
Default: 2
-COEF0: Coefficient 0
floating point number
Minimum: 0.000000
Default: 1.000000
-DEGREE: Degree
floating point number
Minimum: 0.000000
Default: 0.500000
-GAMMA: Gamma
floating point number
Minimum: 0.000000
Default: 5.000000