2020
DOI: 10.48550/arxiv.2008.12165
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Learning Condition Invariant Features for Retrieval-Based Localization from 1M Images

Janine Thoma,
Danda Pani Paudel,
Ajad Chhatkuli
et al.

Abstract: Image features for retrieval-based localization must be invariant to dynamic objects (e.g. cars) as well as seasonal and daytime changes. Such invariances are, up to some extent, learnable with existing methods using triplet-like losses, given a large number of diverse training images. However, due to the high algorithmic training complexity, there exists insufficient comparison between different loss functions on large datasets. In this paper, we train and evaluate several localization methods on three differ… Show more

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