Binary adaptive embeddings from order statistics of random projections

30 Jan 2017  ·  Diego Valsesia, Enrico Magli ·

We use some of the largest order statistics of the random projections of a reference signal to construct a binary embedding that is adapted to signals correlated with such signal. The embedding is characterized from the analytical standpoint and shown to provide improved performance on tasks such as classification in a reduced-dimensionality space.

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