Scale invariant texture descriptors for classifying celiac disease

Graphical abstract Highlights ► We test several approaches for the computer assisted diagnosis of celiac disease. ► Only scale invariant techniques are considered. ► The scale invariance of the approaches is explicitly assessed. ► Some of the methods improve the state of the art in detecting celiac disease. ► The approaches are distinctly less scale invariant than expected.

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