CVDec 27, 2024

Enhancing Fine-grained Image Classification through Attentive Batch Training

arXiv:2412.19606v1h-index: 5
Originality Highly original
AI Analysis

This work addresses the challenge of distinguishing visually similar categories in computer vision, offering a plug-in module for incremental improvements in fine-grained and general image classification.

The paper tackles fine-grained image classification by proposing a novel framework that integrates batch-level relationships, achieving state-of-the-art results with accuracy improvements of +2.78% on CUB200-2011 and +3.83% on Stanford Dog datasets.

Fine-grained image classification, which is a challenging task in computer vision, requires precise differentiation among visually similar object categories. In this paper, we propose 1) a novel module called Residual Relationship Attention (RRA) that leverages the relationships between images within each training batch to effectively integrate visual feature vectors of batch images and 2) a novel technique called Relationship Position Encoding (RPE), which encodes the positions of relationships between original images in a batch and effectively preserves the relationship information between images within the batch. Additionally, we design a novel framework, namely Relationship Batch Integration (RBI), which utilizes RRA in conjunction with RPE, allowing the discernment of vital visual features that may remain elusive when examining a singular image representative of a particular class. Through extensive experiments, our proposed method demonstrates significant improvements in the accuracy of different fine-grained classifiers, with an average increase of $(+2.78\%)$ and $(+3.83\%)$ on the CUB200-2011 and Stanford Dog datasets, respectively, while achieving a state-of-the-art results $(95.79\%)$ on the Stanford Dog dataset. Despite not achieving the same level of improvement as in fine-grained image classification, our method still demonstrates its prowess in leveraging general image classification by attaining a state-of-the-art result of $(93.71\%)$ on the Tiny-Imagenet dataset. Furthermore, our method serves as a plug-in refinement module and can be easily integrated into different networks.

Foundations

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