Classifier
This module classifies the detected objects. Each object can be in one class only. This module can classify the whole image, objects detected in previous modules, or objects in static positions.
Classifier types
Classification of the whole image
This type of Classifier lets you distinguish between different kinds of images by assigning a class to a whole image. It is also possible to select multiple images at once using the ‘Shift’ key and classify them in bulk.
Classification of objects detected in previous modules
When using this type of Classifier, you assign classes to objects already detected in the previous modules (for example Detector, Surface Detector, Code, Anomaly...). The combination with Detector is described in the video below. In this video, the classification and detection process is split into two modules, but it is possible to perform this type of classification directly in the Detector and thereby speed the process up.
Classification of objects in static positions
This option needs the user to draw rectangles determining the position in the image that is supposed to be evaluated. The rectangles are automatically copied to the rest of the images. It is necessary to assign at least 2 different classes.
You are able to lock and unlock the rectangle positions to prevent unwanted relocation during annotations.
To delete a rectangle either press ‘Delete’ on your keyboard or use a trashcan icon at the top of the image.
Set allowed classes manually
With this option it is possible to specify which classes are allowed for individual rectangles. Create classes in Class manager and then specify the Allowed classes for a particular rectangle.
Class management
This module allows a user to set custom classes for the model. It is necessary to define at least two classes and specify their names and colors.
Automatic class import (Classes by folders)
In case your images are named and sorted into folders, it is possible to use the feature Add Folders in the Images Manager. This way your images are going to have a prefix from the folder.
With this method you can automatically create the required classes and annotate images without any additional input.
Training
Look at the following annotations in one image.
Before starting a training we have several options. You are able to Training Overview | Extend Model an existing model, set Classifier | Max size and other.
It is also possible to set a custom Training Data Split, this allows the user to specify how many annotation examples go into training the model and and how many go into testing the accuracy of classification.
The recommendation is 80% training and 20% testing.
If the amount of available images is very low, it is recommended to set the slider to 100% train.
Smart sorting
Smart sorting allows you to automatically classify all the detected objects according to image names or tags. All objects within the image will belong to the same class.
Classes can be assigned by image name prefix, creating a custom regex, or by using tags on images.
If the image corresponds to multiple classes, only the first one is taken into consideration. Processing may take a while.
Classes
To assign a class to an object, click on that object and select a class. The minimum number of classes for training is 2. Not all objects need to have a class assigned. The number in brackets next to the class name indicates the number of objects in that class. Classes can also be selected by pressing a numeric key for faster annotations.
Max size
For training, the classifier module must resize all images to the size of the biggest one, so that they all have the same size, with a maximum value of 800 pixels. The pre-set and recommendation is to keep max size at 256 pixels for most usecases.
During training, annotations are automatically adjusted to fit the max size selected.
If you want to improve accuracy, you can try to select a bigger max size. If you want to improve the processing time or lower the GPU memory required for training, you can try setting a smaller max size.
Inference
Each classified object/image enclosed in a rectangle is labeled with a class name and a percentage - confidence of classification.
To evaluate the accuracy of the trained model you can have a look at Confusion Matrix. The matrix shows the classification results on the testing data.
In Context a new attribute classNames
is added to the detectedRectangles
box. It inserts an associative field with a class description.
Before
{
"x": 28.588958740234375,
"y": 4.583988189697266,
"width": 90.23117065429688,
"height": 64.35350036621094,
"id": 1681720335225001,
"confidence": 0.9833984375
}
After
{
"x": 28.588958740234375,
"y": 4.583988189697266,
"width": 90.23117065429688,
"height": 64.35350036621094,
"id": 1681720335225001,
"confidence": 0.9833984375,
"classNames": [
{
"label": "Class 1",
"id": 1,
"accuracy": 0.9995
}
]
}