Task-Oriented Channel Attention for Fine-Grained Few-Shot Classification
The difficulty of fine-grained image classification mainly comes from a shared overall appearance across classes. Thus, recognizing discriminative details, such as the eyes and beaks of birds, is a key to the task. However, this is particularly challenging when training data is limited. To address t...
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Veröffentlicht in: | IEEE transactions on pattern analysis and machine intelligence 2024-11, p.1-16 |
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Zusammenfassung: | The difficulty of fine-grained image classification mainly comes from a shared overall appearance across classes. Thus, recognizing discriminative details, such as the eyes and beaks of birds, is a key to the task. However, this is particularly challenging when training data is limited. To address this, we propose Task Discrepancy Maximization (TDM), a task-oriented channel attention method tailored for fine-grained few-shot classification with two novel modules Support Attention Module (SAM) and Query Attention Module (QAM). SAM highlights channels encoding class-wise discriminative features, while QAM assigns higher weights to object-relevant channels of the query. Based on these submodules, TDM produces task-adaptive features by focusing on channels encoding class-discriminative details and possessed by the query at the same time, for accurate class-sensitive similarity measure between support and query instances. While TDM influences high-level feature maps by task-adaptive calibration of channel-wise importance, we further introduce Instance Attention Module (IAM) operating in intermediate layers of feature extractors to instance-wisely highlight object-relevant channels, by extending QAM. The merits of TDM and IAM and their complementary benefits are experimentally validated in fine-grained few-shot classification tasks. Moreover, IAM is also effective in coarse-grained and cross-domain few-shot classifications. |
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ISSN: | 0162-8828 2160-9292 |
DOI: | 10.1109/TPAMI.2024.3504537 |