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Users Personalized Sketch-Based Image Retrieval Using Deep Transfer Learning

  • Qiming Huo
  • Jingyu Wang
  • Qi Qi
  • Haifeng Sun
  • Ce Ge
  • Yu Zhao
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 11061)

Abstract

Traditionally, sketch-based image retrieval is mostly based on human-defined features for similarity calculation and matching. The retrieval results are generally similar in contour and lack complete semantic information of the image. Simultaneously, due to the inherent ambiguity of hand-drawn images, there is “one-to-many” category mapping relationship between hand-drawn and natural images. To accurately improve the fine-grained retrieval results, we first train a SBIR general model. Based on the two-branch full-shared parameters architecture, we innovatively propose a deep full convolutional neural network structure model, which obtains mean average precision (MAP) 0.64 on the Flickr15K dataset. On the basis of the general model, we combine the user history feedback image with the input hand-drawn image as input, and use the transfer learning idea to finetune the distribution of features in vector space so that the neural network can achieve fine-grained image feature learning. This is the first time that we propose to solve the problem of personalization in the field of sketch retrieval by the idea of transfer learning. After the model migration, we can achieve fine-grained image feature learning to meet the personalized needs of the user’s sketches.

Keywords

Personalized sketch-based image retrieval Deep full convolutional neural network Transfer learning Feature extraction 

Notes

Acknowledgment

This work was jointly supported by: (1) National Natural Science Foundation of China (No. 61771068, 61671079, 61471063, 61372120, 61421061); (2) Beijing Municipal Natural Science Foundation (No. 4182041, 4152039); (3) the National Basic Research Program of China (No. 2013CB329102).

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Copyright information

© Springer Nature Switzerland AG 2018

Authors and Affiliations

  • Qiming Huo
    • 1
  • Jingyu Wang
    • 1
  • Qi Qi
    • 1
  • Haifeng Sun
    • 1
  • Ce Ge
    • 1
  • Yu Zhao
    • 1
  1. 1.State Key Laboratory of Networking and Switching TechnologyBeijing University of Posts and TelecommunicationsBeijingChina

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