4.7 Article

Selective Convolutional Descriptor Aggregation for Fine-Grained Image Retrieval

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 26, Issue 6, Pages 2868-2881

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2017.2688133

Keywords

Fine-grained image retrieval; selection and aggregation; unsupervised object localization

Funding

  1. National Natural Science Foundation of China [61422203, 61333014]

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Deep convolutional neural network models pretrained for the ImageNet classification task have been successfully adopted to tasks in other domains, such as texture description and object proposal generation, but these tasks require annotations for images in the new domain. In this paper, we focus on a novel and challenging task in the pure unsupervised setting: fine-grained image retrieval. Even with image labels, fine-grained images are difficult to classify, letting alone the unsupervised retrieval task. We propose the selective convolutional descriptor aggregation (SCDA) method. The SCDA first localizes the main object in fine-grained images, a step that discards the noisy background and keeps useful deep descriptors. The selected descriptors are then aggregated and the dimensionality is reduced into a short feature vector using the best practices we found. The SCDA is unsupervised, using no image label or bounding box annotation. Experiments on six fine-grained data sets confirm the effectiveness of the SCDA for fine-grained image retrieval. Besides, visualization of the SCDA features shows that they correspond to visual attributes (even subtle ones), which might explain SCDA's high-mean average precision in finegrained retrieval. Moreover, on general image retrieval data sets, the SCDA achieves comparable retrieval results with the state-of- the-art general image retrieval approaches.

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