Differentiable Histogram with Hard-Binning

The simplicity and expressiveness of a histogram render it a useful feature in different contexts including deep learning. Although the process of computing a histogram is non-differentiable, researchers have proposed differentiable approximations, which have some limitations. A differentiable histogram that directly approximates the hard-binning operation in conventional histograms is proposed. It combines the strength of existing differentiable histograms and overcomes their individual challenges. In comparison to a histogram computed using Numpy, the proposed histogram has an absolute approximation error of 0.000158. Paper/ Accepted in BAI Workshop 2020

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Oluwafemi Azeez
Research Engineer (Team Lead)

My research interests include Reinforcement learning and computer vision.