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Yale University

Theoretical Interpretation of the ACID for Stabilizing Deep Reconstruction Networks

Yale University via YouTube

Overview

Explore a theoretical interpretation of the Adaptive Consistency-Induced Denoiser (ACID) for stabilizing deep reconstruction networks in this 23-minute conference talk by Hengyong Yu from the University of Massachusetts at Lowell. Delivered at the Deep Reconstruction Workshop at Yale University on March 25, 2023, delve into the innovative approaches for enhancing the stability and performance of deep learning models in image reconstruction tasks.

Syllabus

Theoretical Interpretation of the ACID for Stabilizing Deep Reconstruction Networks

Taught by

Yale Radiology and Biomedical Imaging

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