4.8 Article

Hierarchical Deep Click Feature Prediction for Fine-Grained Image Recognition

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2019.2932058

关键词

Visualization; Feature extraction; Image recognition; Semantics; Predictive models; Vocabulary; Task analysis; Click prediction; hierarchical model; word embedding; deep neural network; transfer learning

资金

  1. National Natural Science Foundation of China [61836002, 61602136, 61622205, 61601158]
  2. Zhejiang Provincial Natural Science Foundation of China [LY19F020038]
  3. Australian Research Council [FL-170100117, DP-180103424]
  4. Zhejiang Provincial Key Science and Technology Project Foundation [2018C01012]

向作者/读者索取更多资源

This paper proposes a method to predict the click feature of an image from visual features by integrating sparse constraints and an improved RELU operator. The method learns from an auxiliary image dataset containing click information to discover the hierarchy of word semantics. Experimental results show that the method achieves higher recognition accuracy, larger compression ratio, and good one-shot learning ability and scalability to unseen categories.
The click feature of an image, defined as the user click frequency vector of the image on a predefined word vocabulary, is known to effectively reduce the semantic gap for fine-grained image recognition. Unfortunately, user click frequency data are usually absent in practice. It remains challenging to predict the click feature from the visual feature, because the user click frequency vector of an image is always noisy and sparse. In this paper, we devise a Hierarchical Deep Word Embedding (HDWE) model by integrating sparse constraints and an improved RELU operator to address click feature prediction from visual features. HDWE is a coarse-to-fine click feature predictor that is learned with the help of an auxiliary image dataset containing click information. It can therefore discover the hierarchy of word semantics. We evaluate HDWE on three dog and one bird image datasets, in which Clickture-Dog and Clickture-Bird are utilized as auxiliary datasets to provide click data, respectively. Our empirical studies show that HDWE has 1) higher recognition accuracy, 2) a larger compression ratio, and 3) good one-shot learning ability and scalability to unseen categories.

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