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Cross-dimensional Weighting for Aggregated Deep Convolutional Features

About

We propose a simple and straightforward way of creating powerful image representations via cross-dimensional weighting and aggregation of deep convolutional neural network layer outputs. We first present a generalized framework that encompasses a broad family of approaches and includes cross-dimensional pooling and weighting steps. We then propose specific non-parametric schemes for both spatial- and channel-wise weighting that boost the effect of highly active spatial responses and at the same time regulate burstiness effects. We experiment on different public datasets for image search and show that our approach outperforms the current state-of-the-art for approaches based on pre-trained networks. We also provide an easy-to-use, open source implementation that reproduces our results.

Yannis Kalantidis, Clayton Mellina, Simon Osindero• 2015

Related benchmarks

TaskDatasetResultRank
Image RetrievalHolidays
mAP84.9
115
Image RetrievalOxford 5k
mAP72.2
100
Image RetrievalOxford5k (test)
mAP74.9
97
Image RetrievalParis6k (test)
mAP84.8
88
Image RetrievalOxford105k (test)
mAP70.6
56
Image RetrievalOxford 105k
mAP67.8
47
Image RetrievalParis6k
mAP79.8
45
Image RetrievalParis 106k (Par106k)
mAP79.7
34
Image RetrievalParis106k (test)
mAP79.4
26
Image RetrievalHolidays standard (test)
mAP85.1
25
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