Bayesian Metric Learning For Uncertainty Quantification In Image Retrieval | Awesome Learning to Hash Add your paper to Learning2Hash

Bayesian Metric Learning For Uncertainty Quantification In Image Retrieval

Frederik Warburg, Marco Miani, Silas Brack, Soren Hauberg . Arxiv 2023 – 0 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Distance Metric Learning Evaluation Image Retrieval

We propose the first Bayesian encoder for metric learning. Rather than relying on neural amortization as done in prior works, we learn a distribution over the network weights with the Laplace Approximation. We actualize this by first proving that the contrastive loss is a valid log-posterior. We then propose three methods that ensure a positive definite Hessian. Lastly, we present a novel decomposition of the Generalized Gauss-Newton approximation. Empirically, we show that our Laplacian Metric Learner (LAM) estimates well-calibrated uncertainties, reliably detects out-of-distribution examples, and yields state-of-the-art predictive performance.

Similar Work