Instance-level Image Retrieval using Reranking Transformers

ICCV 2021  ·  Fuwen Tan, Jiangbo Yuan, Vicente Ordonez ·

Instance-level image retrieval is the task of searching in a large database for images that match an object in a query image. To address this task, systems usually rely on a retrieval step that uses global image descriptors, and a subsequent step that performs domain-specific refinements or reranking by leveraging operations such as geometric verification based on local features. In this work, we propose Reranking Transformers (RRTs) as a general model to incorporate both local and global features to rerank the matching images in a supervised fashion and thus replace the relatively expensive process of geometric verification. RRTs are lightweight and can be easily parallelized so that reranking a set of top matching results can be performed in a single forward-pass. We perform extensive experiments on the Revisited Oxford and Paris datasets, and the Google Landmarks v2 dataset, showing that RRTs outperform previous reranking approaches while using much fewer local descriptors. Moreover, we demonstrate that, unlike existing approaches, RRTs can be optimized jointly with the feature extractor, which can lead to feature representations tailored to downstream tasks and further accuracy improvements. The code and trained models are publicly available at https://github.com/uvavision/RerankingTransformer.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Image Retrieval ROxford (Hard) DELG+ α QE reranking+ RRT reranking mAP 64 # 4
Image Retrieval ROxford (Medium) DELG+ α QE reranking + RRT reranking mAP 80.4 # 4
Image Retrieval RParis (Hard) DELG+ α QE reranking + RRT reranking mAP 77.7 # 4
Image Retrieval RParis (Medium) DELG+ α QE reranking + RRT reranking mAP 88.5 # 3

Methods


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