Centre‐loss—A preferred class verification approach over sample‐to‐sample in self‐checkout products datasets
Bernardas Ciapas,
Povilas Treigys
Abstract:Siamese networks excel at comparing two images, serving as an effective class verification technique for a single‐per‐class reference image. However, when multiple reference images are present, Siamese verification necessitates multiple comparisons and aggregation, often unpractical at inference. The Centre‐Loss approach, proposed in this research, solves a class verification task more efficiently, using a single forward‐pass during inference, than sample‐to‐sample approaches. Optimising a Centre‐Loss function… Show more
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