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Papers/Task Discrepancy Maximization for Fine-grained Few-Shot Cl...

Task Discrepancy Maximization for Fine-grained Few-Shot Classification

SuBeen Lee, WonJun Moon, Jae-Pil Heo

2022-07-04CVPR 2022 1Few-Shot Image ClassificationClassification
PaperPDFCode(official)

Abstract

Recognizing discriminative details such as eyes and beaks is important for distinguishing fine-grained classes since they have similar overall appearances. In this regard, we introduce Task Discrepancy Maximization (TDM), a simple module for fine-grained few-shot classification. Our objective is to localize the class-wise discriminative regions by highlighting channels encoding distinct information of the class. Specifically, TDM learns task-specific channel weights based on two novel components: Support Attention Module (SAM) and Query Attention Module (QAM). SAM produces a support weight to represent channel-wise discriminative power for each class. Still, since the SAM is basically only based on the labeled support sets, it can be vulnerable to bias toward such support set. Therefore, we propose QAM which complements SAM by yielding a query weight that grants more weight to object-relevant channels for a given query image. By combining these two weights, a class-wise task-specific channel weight is defined. The weights are then applied to produce task-adaptive feature maps more focusing on the discriminative details. Our experiments validate the effectiveness of TDM and its complementary benefits with prior methods in fine-grained few-shot classification.

Results

TaskDatasetMetricValueModel
Image ClassificationCUB 200 5-way 5-shotAccuracy93.37TDM
Image ClassificationCUB 200 5-way 1-shotAccuracy84.36TDM
Few-Shot Image ClassificationCUB 200 5-way 5-shotAccuracy93.37TDM
Few-Shot Image ClassificationCUB 200 5-way 1-shotAccuracy84.36TDM

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