Algorithm Modules

You are currently viewing the documentation for version 2.5.4. To access documentation for other versions, click the "Switch Version" button located in the upper-right corner of the page.

■ To use the latest version, visit the Mech-Mind Download Center to download it.

■ If you're unsure about the version of the product you are using, please contact Mech-Mind Technical Support for assistance.

How to troubleshoot the reason why a defect segmentation model is not effective?
  1. Check the labels for errors.

  2. Check that all kinds of defects are included in the training set.

  3. Check that the input image size is reasonable. If the defect is too small it may not be effective for training the model.

When to use the Defect Segmentation module and the Unsupervised Segmentation module?

Generally speaking, both modules can recognize the defect areas in images, but they remain quite different from each other. You may want to choose one by the following considerations:

  • The Defect Segmentation module aims to segment the defects; in other words, a high requirement of accuracy is put on this module in the position, shape, and size of defects. The Unsupervised Segmentation module, however, is designed to judge whether there is any defect in an image and display the possible areas with defects for NG images.

  • For the former, all types of defects should be labeled in the labeling process. The latter, however, poses no such requirement as defect labeling, and NG images are unnecessary for model training, namely that only OK images will be used as the training set.

  • The latter can only show a rough defect area of an image and cannot finely segment a defect. If you want to segment defects in an image, please use the Defect Segmentation module.

If the model performs poorly, how to identify the possible reasons?

Factors to consider: quantity and quality of the training data, data diversity, on-site ROI parameters, and on-site lighting conditions.

  1. Quantity: whether the quantity of training data is enough to make the model achieve good performance.

  2. Quality: whether the data quality is up to standard, whether images are clear enough and are not over-exposed/under-exposed.

  3. Data diversity: whether the data cover all the situations that may occur on-site.

  4. ROI parameters: whether the ROI parameters for data collection are consistent with those for the actual application.

  5. Lighting conditions: Whether the lighting conditions during the actual application change, and whether the conditions are consistent with those during data collection.

What are the differences between the Classification module and the Unsupervised Segmentation module?

Both modules can divide images into several classes, but they are different in terms of usage and functions.

  • Data labeling

    • The main function of the Classification module is to classify images. Therefore, labeling data of each class is required to train a model.

    • The Unsupervised Segmentation module requires only the labeling data of OK images. You do not need to label NG images or specific defect types.

  • Implementation method

    • The Classification module uses the specified label to classify images. When the module detects NG images, it can only recognize NG images with specific one or more defects. NG images with one type of defects together form a class.

    • The Unsupervised Segmentation module determines whether an image is OK, NG, or Unknown on the basis of the specified thresholds. When the module detects NG images, the Unsupervised Segmentation module can recognize NG images with multiple defects.

  • Result display

    • The Classification module generates results based on the labels that you specified. The images can only be divided into specified classes.

    • The Unsupervised Segmentation module can divide images into the OK, NG, and Unknown classes. It can also specify the general range of the defects.

Overall, the Classification module is used when the number of defect classes are limited, and the Unsupervised Segmentation module is used to detect NG images and specify the general range of the defects without determining specific defect classes in advance.

We Value Your Privacy

We use cookies to provide you with the best possible experience on our website. By continuing to use the site, you acknowledge that you agree to the use of cookies. If you decline, a single cookie will be used to ensure you're not tracked or remembered when you visit this website.