Boonaneksap, Surasith2022-02-082022-02-082022-02-07vt_gsexam:33858http://hdl.handle.net/10919/108224Despite facing technical issues (e.g., overfitting, vanishing and exploding gradients), deep neural networks have the potential to capture complex patterns in data. Understanding how depth impacts neural networks performance is vital to the advancement of novel deep learning architectures. By varying hyperparameters on two sets of architectures with different depths, this thesis aims to examine if there are any potential benefits from developing deep networks for segmenting intracranial aneurysms from 3D TOF-MRA scans in the ADAM dataset.ETDenIn CopyrightConvolutional Neural NetworksIntracranial AneurysmsImage SegmentationDeep Convolutional Neural Networks for Segmenting Unruptured Intracranial Aneurysms from 3D TOF-MRA ImagesThesis