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Smooth-AP: Smoothing the Path Towards Large-Scale Image Retrieval (2007.12163v2)

Published 23 Jul 2020 in cs.CV

Abstract: Optimising a ranking-based metric, such as Average Precision (AP), is notoriously challenging due to the fact that it is non-differentiable, and hence cannot be optimised directly using gradient-descent methods. To this end, we introduce an objective that optimises instead a smoothed approximation of AP, coined Smooth-AP. Smooth-AP is a plug-and-play objective function that allows for end-to-end training of deep networks with a simple and elegant implementation. We also present an analysis for why directly optimising the ranking based metric of AP offers benefits over other deep metric learning losses. We apply Smooth-AP to standard retrieval benchmarks: Stanford Online products and VehicleID, and also evaluate on larger-scale datasets: INaturalist for fine-grained category retrieval, and VGGFace2 and IJB-C for face retrieval. In all cases, we improve the performance over the state-of-the-art, especially for larger-scale datasets, thus demonstrating the effectiveness and scalability of Smooth-AP to real-world scenarios.

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Authors (4)
  1. Andrew Brown (31 papers)
  2. Weidi Xie (132 papers)
  3. Vicky Kalogeiton (31 papers)
  4. Andrew Zisserman (248 papers)
Citations (156)

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