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Contrastive learning for echocardiographic view integration
by Li-Hsin Cheng from Division of Image Processing (LKEB)
In this work, we aimed to tackle the challenge of fusing information from multiple echocardiographic views, mimicking cardiologists making diagnoses with an integrative approach. We proposed intra-subject and inter-subject contrastive losses with varying margin to encode heterogeneous input views to a shared view-invariant and objective-relevant feature space, where feature fusion can be facilitated. The result demonstrated that the contrastive losses successfully improved the integration of complementary information from the input views.
Location: V-01-020, Building 3
Onderwijsgebouw, Leiden University Medical Center
Leiden
More information about this work can be found here: