Search Results for author: Mark Philip Philipsen

Found 2 papers, 0 papers with code

Prediction Confidence from Neighbors

no code implementations31 Mar 2020 Mark Philip Philipsen, Thomas Baltzer Moeslund

Depending on the acceptable degree of error, predictions can either be trusted or rejected based on the distance to training samples.

Distance in Latent Space as Novelty Measure

no code implementations31 Mar 2020 Mark Philip Philipsen, Thomas Baltzer Moeslund

Similarity is measured based on the Euclidean distance between samples in the latent space produced by a DNN.

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