Risk Controlled Image Retrieval

14 Jul 2023  ·  Kaiwen Cai, Chris Xiaoxuan Lu, Xingyu Zhao, Xiaowei Huang ·

Most image retrieval research focuses on improving predictive performance, ignoring scenarios where the reliability of the prediction is also crucial. Uncertainty quantification technique can be applied to mitigate this issue by assessing uncertainty for retrieval sets, but it can provide only a heuristic estimate of uncertainty rather than a guarantee. To address these limitations, we present Risk Controlled Image Retrieval (RCIR), which generates retrieval sets with coverage guarantee, i.e., retrieval sets that are guaranteed to contain the true nearest neighbors with a predefined probability. RCIR can be easily integrated with existing uncertainty-aware image retrieval systems, agnostic to data distribution and model selection. To the best of our knowledge, this is the first work that provides coverage guarantees for image retrieval. The validity and efficiency of RCIR are demonstrated on four real-world image retrieval datasets: Stanford CAR-196, CUB-200, Pittsburgh and ChestX-Det.

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