Two Approaches to Supervised Image Segmentation
Alexandre Benatti, Luciano da F. Costa

TL;DR
This paper compares deep learning and multiset neurons approaches for supervised image segmentation, highlighting the multiset method's efficiency and accuracy advantages with low computational demands.
Contribution
It introduces and compares a multiset neurons methodology with deep learning for image segmentation, emphasizing its robustness and computational efficiency.
Findings
Multiset neurons achieve higher accuracy than deep learning in segmentation tasks.
Multiset approach requires less computational resources.
Deep learning confirms strong segmentation potential.
Abstract
Though performed almost effortlessly by humans, segmenting 2D gray-scale or color images into respective regions of interest (e.g.~background, objects, or portions of objects) constitutes one of the greatest challenges in science and technology as a consequence of several effects including dimensionality reduction(3D to 2D), noise, reflections, shades, and occlusions, among many other possibilities. While a large number of interesting related approaches have been suggested along the last decades, it was mainly thanks to the recent development of deep learning that more effective and general solutions have been obtained, currently constituting the basic comparison reference for this type of operation. Also developed recently, a multiset-based methodology has been described that is capable of encouraging image segmentation performance combining spatial accuracy, stability, and robustness…
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Taxonomy
TopicsImage Processing Techniques and Applications · Medical Image Segmentation Techniques · Remote-Sensing Image Classification
