Abstract

Abstract: Using deep neural networks, supervised 3D reconstruction has made significant progress. However, large-scale annotations of 2D/3D data are necessary for this performance boost [4]. How to effectively represent 3D data to feed deep networks remains a challenge in 3D deep learning. Volumetricor point cloud representations have been used inrecent works, but these methods have a number of drawbacks, including computational complexity, unorganized data, and a lack of finer geometry [7]. The ultrasound (US) examination is onemethod usedto diagnose carotid artery disease. The flow conditions in the artery also play a role in the onset and progression of vascular diseases [5]. Stenting the carotid artery is a treatment option for carotid atherosclerosis. It is impossible to know for sure where an injection with a needle will begin. The place of the conduits is in the body, thusly, decidingthe beginning stage of needle infusion is finished byassessment just and can't not entirely set in stone. The first thing that must be done is to locate the carotid artery in order to identify it. To determine it,we propose a modified template matching based on the ellipse feature for a 3D reconstruction of the carotid artery [1]. Data acquisition, pre-processing, segmentation, outlier selection for ellipse parameterfitting, and visualization are all used to process it. In comparison to the template matching method and the Hough Circle method, the proposed procedure with pre-processing produces the highest accuracy [1]. The objective of this research was to create three- dimensional (3D) ultrasound imaging of the carotid arteries to lessen the variability of volume measurements between and within examiners duringfollow-up scans of atherosclerotic plaques.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call