Birdsnap: Large-Scale Fine-Grained Visual Categorization of Birds

CVPR(2014)

引用 395|浏览115
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摘要
We address the problem of large-scale fine-grained visual categorization, describing new methods we have used to produce an online field guide to 500 North American bird species. We focus on the challenges raised when such a system is asked to distinguish between highly similar species of birds. First, we introduce \"one-vs-most classifiers.\" By eliminating highly similar species during training, these classifiers achieve more accurate and intuitive results than common one-vs-all classifiers. Second, we show how to estimate spatio-temporal class priors from observations that are sampled at irregular and biased locations. We show how these priors can be used to significantly improve performance. We then show state-of-the-art recognition performance on a new, large dataset that we make publicly available. These recognition methods are integrated into the online field guide, which is also publicly available.
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关键词
image classification,North American bird species,birdsnap,large-scale fine-grained visual categorization,one-vs-most classifiers,recognition performance,spatio-temporal class estimation,Fine-grained visual categorization,birds,large-scale classification,recognition,species identification
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