0000000001216526

AUTHOR

Nicola Landro

0000-0002-0565-7496

showing 1 related works from this author

Learning to Navigate in the Gaussian Mixture Surface

2021

In the last years, deep learning models have achieved remarkable generalization capability on computer vision tasks, obtaining excellent results in fine-grained classification problems. Sophisticated approaches based-on discriminative feature learning via patches have been proposed in the literature, boosting the model performances and achieving the state-of-the-art over well-known datasets. Cross-Entropy (CE) loss function is commonly used to enhance the discriminative power of the deep learned features, encouraging the separability between the classes. However, observing the activation map generated by these models in the hidden layer, we realize that many image regions with low discrimin…

Boosting (machine learning)Settore INF/01 - InformaticaComputer scienceGeneralizationbusiness.industryDeep learningGaussianFine-grained image classification; Loss functionPattern recognitionConvolutional neural networkLoss functionImage (mathematics)symbols.namesakeFine-grained image classificationDiscriminative modelSettore MAT/05 - Analisi MatematicasymbolsArtificial intelligencebusinessFeature learning
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