Title
Adaptive Semantic-Visual Tree for Hierarchical Embeddings
Abstract
Merchandise categories inherently form a semantic hierarchy with different levels of concept abstraction, especially for fine-grained categories. This hierarchy encodes rich correlations among various categories across different levels, which can effectively regularize the semantic space and thus make prediction less ambiguous. However, previous studies of fine-grained image retrieval primarily focus on semantic similarities or visual similarities. In real application, merely using visual similarity may not satisfy the need of consumers to search merchandise with real-life images, e.g., given a red coat as query image, we might get red suit in recall results only based on visual similarity, since they are visually similar; But the users actually want coat rather than suit even the coat is with different color or texture attributes. We introduce this new problem based on photo shopping in real practice. That's why semantic information are integrated to regularize the margins to make "semantic" prior to "visual". To solve this new problem, we propose a hierarchical adaptive semantic-visual tree (ASVT) to depict the architecture of merchandise categories, which evaluates semantic similarities between different semantic levels and visual similarities within the same semantic class simultaneously. The semantic information satisfies the demand of consumers for similar merchandise with the query while the visual information optimize the correlations within the semantic class. At each level, we set different margins based on the semantic hierarchy and incorporate them as prior information to learn a fine-grained feature embedding. To evaluate our framework, we propose a new dataset named JDProduct, with hierarchical labels collected from actual image queries and official merchandise images on online shopping application. Extensive experimental results on the public CARS196 and CUB-200-2011 datasets demonstrate the superiority of our ASVT framework against compared state-of-the-art methods.
Year
DOI
Venue
2019
10.1145/3343031.3350995
Proceedings of the 27th ACM International Conference on Multimedia
Keywords
Field
DocType
dataset, feature embedding, merchandise image retrieval
Computer science,Artificial intelligence,Multimedia
Conference
ISSN
ISBN
Citations 
The 27th ACM Multimedia (2019) 2097-2105
978-1-4503-6889-6
1
PageRank 
References 
Authors
0.35
0
5
Name
Order
Citations
PageRank
Shuo Yang110.35
Wei Yu210.35
Ying Zheng3152.62
Hongxun Yao42485156.65
Tao Mei54702288.54