학술논문

Sketch-based image retrieval via CAT loss with elastic net regularization.
Document Type
Article
Source
Mathematical Foundations of Computing. Nov2020, Vol. 3 Issue 4, p219-227. 9p.
Subject
*IMAGE retrieval
*NET losses
*ENERGY function
*CATS
*MATHEMATICAL regularization
*COMPUTATIONAL complexity
Language
ISSN
2577-8838
Abstract
Fine-grained sketch-based image retrieval (FG-SBIR) is an important problem that uses free-hand human sketch as queries to perform instance-level retrieval of photos. Human sketches are generally highly abstract and iconic, which makes FG-SBIR a challenging task. Existing FG-SBIR approaches using triplet loss with ℓ2 regularization or higher-order energy function to conduct retrieval performance, which neglect the feature gap between different domains (sketches, photos) and need to select the weight layer matrix. This yields high computational complexity. In this paper, we define a new CAT loss function with elastic net regularization based on attention model. It can close the feature gap between different subnetworks and embody the sparsity of the sketches. Experiments demonstrate that the proposed approach is competitive with state-of-the-art methods. [ABSTRACT FROM AUTHOR]