Learning Fine-Grained Image Similarity with Deep Ranking

Jiang Wang(Google (United States)), Yang Song(Google (United States)), Thomas Leung, Chuck Rosenberg(Google (United States)), Jingbin Wang(Google (United States)), James Philbin(Google (United States)), Bo Chen(California Institute of Technology), Ying Wu(Northwestern University)
Unknown
June 1, 2014
Cited by 1,246

Abstract

Learning fine-grained image similarity is a challenging task. It needs to capture between-class and within-class image differences. This paper proposes a deep ranking model that employs deep learning techniques to learn similarity metric directly from images. It has higher learning capability than models based on hand-crafted features. A novel multiscale network structure has been developed to describe the images effectively. An efficient triplet sampling algorithm is also proposed to learn the model with distributed asynchronized stochastic gradient. Extensive experiments show that the proposed algorithm outperforms models based on hand-crafted visual features and deep classification models.


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