Abstract

Fine-grained Image Analysis (FGIA) as a branch of the image analysis tasks has received more and more attention in recent years. Compared with ordinary image analysis tasks, FGIA requires more detailed human data annotation, which not only requires the annotator to have professional knowledge, but also requires greater labor costs. An effective solution is to apply the domain adaptation (DA) method to transfer knowledge from existing fine-grained image datasets to massive unlabeled data. This paper presents the circular attention mechanism to cyclically extract deep-level image features to match the label hierarchy from coarse to fine. What is more, the networks effectively improve the distinguishability and transferability of fine-grained features based on the adversarial learning framework. Experimental results show that our proposed method achieves excellent transfer performance on three fine-grained recognition benchmarks.

Highlights

  • F INE-GRAINED Image Analysis (FGIA) is called subcategory image analysis which aims to categorize an object among a large number of subordinate categories within the same meta-category

  • This paper aims to address these challenges by designing adversarial networks with circular attention mechanism for fine-grained domain adaptation

  • We evaluate the proposed Adversarial Networks with Circular Attention Mechanism and record the average classification accuracy after the domain adaptation based on three benchmarks

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Summary

Introduction

F INE-GRAINED Image Analysis (FGIA) is called subcategory image analysis which aims to categorize an object among a large number of subordinate categories within the same meta-category. The huge intra-class differences and subtle inter-class differences in FGIA tasks bring challenges to mainstream machine learning models. To address this issue, people have made many efforts and achieved great advance in fine-grained recognition tasks in recent years. The number of fine-grained image datasets has increased significantly in recent years, which includes different sample types such as birds [3] [4], flowers [5] [6], cars [7] [8] [9] [10], dogs [11] [12], etc

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