How does deep learning help with image processing?
Machine learning and deep learning are used when conventional methods for image segmentation are not sufficient. The trainable system consists of neural networks in which all relevant information for image processing is stored. Technically, it is crucial to correctly differentiate between the different areas and characteristics in order to create an optimal analysis and achieve precise and reproducible results.
A training model is created to teach the AI how to analyze images. Certain areas are marked on an image (or on several images) by assigning different colors to different features that are important for quality assurance. The AI learns the properties of the areas or features and creates its own algorithm for classification. The algorithm is then applied to the remaining image data that has not yet been marked or colored. The AI learns independently which features it needs to pay particular attention to in connection with a certain class. The more training data or sample images are analyzed, the more accurate the algorithm becomes.