CVMay 23, 2016

Generic Instance Search and Re-identification from One Example via Attributes and Categories

arXiv:1605.07104v12 citations
Originality Incremental advance
AI Analysis

This addresses the problem of instance search for non-planar objects, offering a more generalizable approach compared to prior work focused on buildings and logos.

The paper tackles generic instance search from a single example for arbitrary objects like shoes, proposing category-specific attributes that outperform existing methods on shoes and cars and achieve state-of-the-art performance on person re-identification.

This paper aims for generic instance search from one example where the instance can be an arbitrary object like shoes, not just near-planar and one-sided instances like buildings and logos. First, we evaluate state-of-the-art instance search methods on this problem. We observe that what works for buildings loses its generality on shoes. Second, we propose to use automatically learned category-specific attributes to address the large appearance variations present in generic instance search. Searching among instances from the same category as the query, the category-specific attributes outperform existing approaches by a large margin on shoes and cars and perform on par with the state-of-the-art on buildings. Third, we treat person re-identification as a special case of generic instance search. On the popular VIPeR dataset, we reach state-of-the-art performance with the same method. Fourth, we extend our method to search objects without restriction to the specifically known category. We show that the combination of category-level information and the category-specific attributes is superior to the alternative method combining category-level information with low-level features such as Fisher vector.

Foundations

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