An Adversarial Domain Adaptation Network for Cross-Domain Fine-Grained Recognition

2020 
In this paper, we tackle a valuable yet very challenging visual recognition task, where the instances are within a subordinate category, and the target domain undergoes a shift with the source domain. This task, termed as cross-domain fine-grained recognition, relates closely to many real-life scenarios, e.g., recognizing retail products in storage racks by models trained with images collected in controlled environments. To deal with this problem, we design a new algorithm and propose a corresponding fine-grained domain adaptation dataset. Firstly, we propose a novel end-to-end CNN architecture that integrates two specialized modules: an adversarial module for domain alignment and a self-attention module for fine-grained recognition. The adversarial module is used to handle domain shift by gradually aligning the different domains with domain-level and class-level alignments, and strive to help the classifier learn with domain-invariant features generated by nets. The self-attention module is designed to capture discriminative image regions which are crucial for fine-grained visual recognition. Secondly, we collect a large-scale fine-grained domain adaptation dataset of retail products, which contains 52,011 images of 263 classes from 3 domains. Thirdly, we validate the effectiveness of our method on three datasets, showing that the proposed method can yield significant improvements over baseline methods on fine-grained datasets. Besides, we also evaluate the effectiveness of the self-attention module by performing visualization, which can capture the discriminative image regions in both source and target domains.
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