Data Processing

Image Preprocessing

You can adjust the brightness, contrast, and color balance of images.

Typical Usage Scenarios

The original images captured by the camera might be dark or don’t have obvious object features due to lighting or other factors. In such cases, you can preprocess images for better results.

Steps

  1. Click image preprocessing tool icon to open the Image Preprocessing Tool.

  2. Adjust the parameters to satisfy your needs.

  3. Click Start and wait for the processing to complete.

  4. Click OK in the pop-up window.

Range of preprocessing: All images of the current project. The preprocessed images will replace the original images in the training, test, and validation sets.
alt

Filter Images

You can set the filtering conditions to conveniently select specific images from datasets.

Typical Usage Scenarios

  • View the results of the dataset division. When the images are divided into different datasets, you can filter images by dataset type to view the content of each dataset and check whether the division results need to be adjusted.

  • Check the data labeling results. During labeling, you can view the labeling progress and labeling results by data type.

  • Check the model prediction results. After validation, you can view the validation results by result type. For instance, when a defect segmentation model makes an incorrect prediction, you can filter the images by selecting False positive and False negative for the result type and do a quick check. The incorrect prediction might result from wrong labels.

Steps

  1. Click process filter images.

  2. You can set the filtering conditions according to actual needs.

  3. Click OK.

    process filter images1

Switch to Preview Mode

The list view mode is the default mode, and you can click toggle preview mode icon to view icons. You can drag the slider to change the display size of icons. Click it again to display the list.

Partition Training and Validation Sets

By default, 80% of the images in the dataset will be split into the training set, and the rest 20% will be split into the validation set. Please make sure that both the training set and validation set include images in all different classes, which will guarantee that the model can learn all different features and validate the images of different classes properly.

Steps

  1. Click images divide icon.

  2. Drag the slider to adjust the proportion of the training set and validation set.

Right-click the image and click Switch to training set, Switch to validation set, or Switch to test set on the pop-up menu to modify the set to which the current image belong.

The test set is not involved in training and validation.
images divide

Image Tag

With the image tagging function, you can add tags to images and thereby manage massive image data in a centralized manner according to the usage scenarios of images.

Typical Usage Scenarios

  • For using the Defect Segmentation module:

    If the objects in the images have multiple types of defects, the images need to be divided by defect types, and you can divide the images by adding tags.

    If it is hard to instantly determine whether the current image contains any defects, you can tag the image first to make a judgment on the image later.

  • After validation, you can tag the images with poor validation results so that you can export the tagged images in groups for optimizing the model.

Steps

  1. Create a new tag

    1. Click + on the management panel of Image Tag. (The management panel of Image Tag is in the lower right corner of the software interface)

    2. By default, the tag name is imageTag1. Double-click it to rename it.

      • Repeat the above steps to create more tags.

      • Select the tag and click image label delete icon to delete it. The tag added to the corresponding image(s) will be cleared once deleted.

  2. Add tags to an image

    1. Click an image in the list or select multiple images.

    2. Click the corresponding tag on the management panel of Image Tag. The tag will be added to the image(s).

      • Press Ctrl or Shift on the keyboard to select multiple images.

      • Right-click the tagged image(s) and click Clear tags to clear the tags of the selected image(s).

image label delete example

Add a Comment

Click an image in the list and add a comment on the Comment bar.

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