2019
DOI: 10.1121/1.5137068
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Vector flow imaging using a deep neural network

Abstract: Vector flow imaging (VFI) estimates blood flow velocities in both azimuth and axial dimensions. VFI has promising applications in the characterization of complex flow patterns, including cardiac flow and abdominal flow imaging. Conventional VFI relies on the use of multiple angles in transmit or receive, or speckle tracking. They are computationally intensive and estimate quality may be sacrificed to improve computational speed. In this work, we report a vector flow estimation technique using a deep neural net… Show more

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“…Deep Neural Network (DNN) is a neural network with a deep structure of hidden layers, which has better performance than the shallow neural network (neural network with only one hidden layer) in many aspects in a broad field of applications such as pattern recognition, speech recognition and computer vision, see for example [48,43,36]. The deep structure has a greater approximation power than a shallow neural network.…”
Section: Introductionmentioning
confidence: 99%
“…Deep Neural Network (DNN) is a neural network with a deep structure of hidden layers, which has better performance than the shallow neural network (neural network with only one hidden layer) in many aspects in a broad field of applications such as pattern recognition, speech recognition and computer vision, see for example [48,43,36]. The deep structure has a greater approximation power than a shallow neural network.…”
Section: Introductionmentioning
confidence: 99%