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  • title: Speed-of-Sound Mapping for Pulse-Echo Ultrasound Raw Data using Linked-Autoencoders
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            Speed-of-Sound Mapping for Pulse-Echo Ultrasound Raw Data using Linked-Autoencoders
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            Speed-of-Sound Mapping for Pulse-Echo Ultrasound Raw Data using Linked-Autoencoders

            Jul 28, 2023

            Sprecher:innen

            FKJ

            Farnaz Khun Jush

            Speaker · 0 followers

            PMD

            Peter M. Dueppenbecker

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            AM

            Andreas Maier

            Speaker · 0 followers

            Über

            Recent studies showed the possibility of extracting SoS information from pulse-echo ultrasound raw data (a.k.a. RF data) using deep neural networks that are fully trained on simulated data.These methods take sensor domain data, i.e., RF data, as input and train a network in an end-to-end fashion to learn the implicit mapping between the RF data domain and SoS domain. However, such networks are prone to overfitting to simulated data which results in poor performance and instability when tested on…

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            ICML 2023

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