image segmentation using cellular automata
Image segmentation using cellular automata is a technique that involves dividing an image into multiple distinct regions or segments based on the concept of cellular automata, a computational model that simulates the behavior of small units called cells. The segmentation process involves assigning different states or labels to individual pixels in the image based on local rules and interactions between neighboring cells, resulting in the creation of separate and meaningful image segments.
Requires login.
Related Concepts (1)
Similar Concepts
- cellular automata and image processing
- cellular automata for image inpainting
- cellular automata for image synthesis
- cellular automata for object recognition
- cellular automata for shape recognition
- cellular automata for texture analysis and pattern recognition
- cellular automata in computer graphics
- cellular automata-based edge detection
- cellular automata-based image compression
- image enhancement using cellular automata
- image generation with cellular automata
- image processing using cellular automata
- object recognition using cellular automata
- texture analysis using cellular automata
- texture synthesis using cellular automata