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Tandem: segmentation of small medical objects exploiting classification.
Rel. Daniele Apiletti, Simone Monaco. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Informatica (Computer Engineering), 2024
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Abstract
Deep Learning Medical Image Segmentation is a popular computer vision task, its goal is to provide a precise and accurate representation of target objects with the purpose of disease diagnosis or treatment planning. In this thesis we apply Deep Learning Image Segmentation methods to detect cysts on physiological images of kidneys tissues affected by ADPKD. The collected dataset is characterized by images depicting several sparse and tiny cysts with different sizes and shapes in order to improve segmentation results already computed in previous work over it. Moreover, given images and cysts characteristics we will focus our attention over deep learning methods developed to well perform also with images depicting really small objects.
Different solutions will be explored and finally a proposed method consisting of a segmentation model and a classifier trained together, called Tandem method, will be presented and tested
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