Abstract

Most supervised cross-modal approaches transform features into a common representation space in which semantic similarity can be measured directly. However, there exist modal specific features in the common semantic space and most methods cannot fully eliminate them. In order to bridge the semantic gap and eliminate modal specific features, we propose a novel Multi-label Adversarial Fine-grained Cross-modal Retrieval Based on Transformer (MLAT). MLAT constructs a semantic consistency enhanced module (SCE) which includes the semantic mask attention module and a fine-grained feature generator based on transformer. It learns fine-grained semantic information to preserve the high-level semantic relevance and eliminate modal specific features. In order to narrow the distance between common representations and further eliminate modal specific features, we construct a multi-stage adversarial learning module to optimize feature representations. Furthermore, we design a label graph network based on graph attention network (GAT) to better explore the semantic correlations between labels and learn a classifier. Three benchmark datasets are synthesized to demonstrate the superiority of MLAT method.

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