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Adversarial Learning of Hard Positives for Place Recognition

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arxiv 2205.03871 v1 pith:QLOVIFOB submitted 2022-05-08 cs.CV

Adversarial Learning of Hard Positives for Place Recognition

classification cs.CV
keywords hardimageretrievalpositivesgloballearnmethodadversarial
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Image retrieval methods for place recognition learn global image descriptors that are used for fetching geo-tagged images at inference time. Recent works have suggested employing weak and self-supervision for mining hard positives and hard negatives in order to improve localization accuracy and robustness to visibility changes (e.g. in illumination or view point). However, generating hard positives, which is essential for obtaining robustness, is still limited to hard-coded or global augmentations. In this work we propose an adversarial method to guide the creation of hard positives for training image retrieval networks. Our method learns local and global augmentation policies which will increase the training loss, while the image retrieval network is forced to learn more powerful features for discriminating increasingly difficult examples. This approach allows the image retrieval network to generalize beyond the hard examples presented in the data and learn features that are robust to a wide range of variations. Our method achieves state-of-the-art recalls on the Pitts250 and Tokyo 24/7 benchmarks and outperforms recent image retrieval methods on the rOxford and rParis datasets by a noticeable margin.

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