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Machine Learning / Artificial Intelligence – solution to complex machine vision tasks

Rule-based machine vision has reached its limits in many automation applications. A few of the constraints include changing backgrounds, variable surfaces and objects. Artificial intelligence with machine learning, specifically deep learning, is being used more and more, enabling the reliable implementation of highly complex imaging tasks such as scale and rotation invariant object detection and classification as well as the detection of deviations and surface defects during manufacture.

Our training will introduce you to the benefits and challenges of conventional machine learning and deep learning, the fundamental differences between the approaches and the possibilities offered by STEMMER IMAGING’s Common Vision Blox (CVB). You will find out about the limits of conventional imaging and experience the fast, intuitive and easy-to-use CVB Polimago tool in real-life application examples.

By the end of the course, you will be familiar with the entire machine learning process from the image acquisition to the planning and developing of training sets and the creation, training and evaluation of classifiers. Bring your application samples and images; we’d be happy to provide you with an initial evaluation.

Target audience

  • People new to the machine vision and artificial intelligence domain
  • Users with specific tasks and the question if these can be solved with machine learning

Pre-conditions

  • Basic machine vision knowledge recommended
  • No prior machine learning knowledge required
  • No programming knowledge required

Content

Theory

  • Applying conventional rule-based machine vision; the need for machine learning
  • When to choose conventional machine vision over machine learning
  • Machine learning overview – theoretical basics and technical terms
  • Differentiation deep learning – machine learning
  • Theoretical approach: Convolutional Neural Networks (CNN)
  • Theoretical approach: CVB Polimago
  • A brief introduction to other CVB machine learning tools

Application examples/success stories on CVB machine learning tools Practical hands-on training

  • CVB Teach Bench Application
    • Image pre-processing and optimisation
  • CVB Polimago
    • Creating training sets for Search/Classification
    • Creating and evaluating classifiers
    • Using created classifiers beyond the CVB Teach Bench application
    • Application examples; evaluating classifiers

Outlook: Future CVB developments for machine learning

Optional: Individual application examples based on images provided by customers

Duration

1 day

Participation fee

This training course is free of charge!