Memoranda

On this page, I will publish notes, essays, reports and other writings that have been produced by myself. The contents can be changed without notice or any form of reporting. Comments can be sent to me personally using the contact form.

A detailed overview of Genetic Algorithm (GA) methods based on a literature review, illustrating key concepts such as selection, crossover, mutation, replacement, and termination. Using a custom visual language based on RGB fitness values, the memo explains common GA techniques like Roulette Wheel Selection, Tournament Selection, Single- and Multi-Point Crossover, and various mutation strategies. Mathematical formulas and clear diagrams accompany the explanations, providing a solid foundation for understanding and applying GAs in optimization problems.

I discuss the importance of connected components in image processing and computer vision, focusing on their role in image segmentation and analysis. In this text, I explore how connected components, especially within Max-Trees, can be used to derive meaningful information from images by computing various attributes. I also provide GNU Octave implementations of these attributes to facilitate practical application.

This website collects statistical data in order to improve your user experience.

Privacy Statement