Print Email Facebook Twitter Comparative analysis of clutter filtering techniques on freehand micro-Doppler ultrasound imaging Title Comparative analysis of clutter filtering techniques on freehand micro-Doppler ultrasound imaging Author Gao, Xuan (TU Delft Electrical Engineering, Mathematics and Computer Science) Contributor Hunyadi, Borbala (mentor) Verhoef, Luuk (mentor) Lopes Marta da Costa, T.M. (graduation committee) Degree granting institution Delft University of Technology Corporate name Delft University of Technology Programme Electrical Engineering | Signals and Systems Date 2023-07-04 Abstract Micro-Doppler (µDoppler) ultrasound imaging is a high frame rate ultrasound imaging modality that provides high spatiotemporal resolution ultrasound images of blood flow. It is sensitive to slow blood flow and particularly suitable for capturing fast-changing phenomena like rapid blood flow. Clutter filtering is an essential step in µDoppler data processing to reject tissue clutter signals and keep blood flow information as much as possible. 3D freehand µDoppler imaging is an emerging ultrasound technique that can construct full spatial vasculature images with a panoramic view that conventional 2D ultrasound is not able to provide. As freehand implies the continuous and nonuniform movement of the probe, it becomes more challenging for clutter filtering to acquire high-quality images.This thesis explores and compares different state-of-art clutter filtering techniques on freehand in-vivo µDoppler imaging of the human brain. Specifically, Singular Value Decomposition (SVD), Robust Principle Component Analysis (Robust PCA), and Independent Component Analysis (ICA) clutter filtering techniques have been investigated. The aim is to test and compare their performance on in-vivo µDoppler ultrasound data with freehand probe movement and understand how freehand motion affects the threshold selection criteria. Besides that, a newly proposed method that combines ICA clutter filtering and clustering is included in this thesis to bring another perspective for sorting independent components corresponding to blood flow and rejecting unwanted ones consisting mostly of tissue clutter signals. Subject Doppler ultrasound imagingSingular Value DecompositionRobust Principal Component AnalysisIndependent Component AnalysisClutter filtering3D Freehand To reference this document use: http://resolver.tudelft.nl/uuid:50698013-bb01-4df4-b1c2-b848515e3881 Part of collection Student theses Document type master thesis Rights © 2023 Xuan Gao Files PDF MSc_Thesis_XuanGao.pdf 12.18 MB Close viewer /islandora/object/uuid:50698013-bb01-4df4-b1c2-b848515e3881/datastream/OBJ/view