Authors
Noam Malali, Yosi Keller
Publication date
2021/12/2
Journal
IEEE Transactions on Pattern Analysis and Machine Intelligence
Volume
44
Issue
12
Pages
10252-10260
Publisher
IEEE
Description
We present a deep learning approach for learning the joint semantic embeddings of images and captions in a euclidean space, such that the semantic similarity is approximated by the distances in the embedding space. For that, we introduce a metric learning scheme that utilizes multitask learning to learn the embedding of identical semantic concepts using a center loss. By introducing a differentiable quantization scheme into the end-to-end trainable network, we derive a semantic embedding of semantically similar concepts in euclidean space. We also propose a novel metric learning formulation using an adaptive margin hinge loss, that is refined during the training phase. The proposed scheme was applied to the MS-COCO, Flicke30K and Flickr8K datasets, and was shown to compare favorably with contemporary state-of-the-art approaches.
Total citations
202220232024241
Scholar articles
N Malali, Y Keller - IEEE Transactions on Pattern Analysis and Machine …, 2021