Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Associative Alignment for Few-shot Image Classification

About

Few-shot image classification aims at training a model from only a few examples for each of the "novel" classes. This paper proposes the idea of associative alignment for leveraging part of the base data by aligning the novel training instances to the closely related ones in the base training set. This expands the size of the effective novel training set by adding extra "related base" instances to the few novel ones, thereby allowing a constructive fine-tuning. We propose two associative alignment strategies: 1) a metric-learning loss for minimizing the distance between related base samples and the centroid of novel instances in the feature space, and 2) a conditional adversarial alignment loss based on the Wasserstein distance. Experiments on four standard datasets and three backbones demonstrate that combining our centroid-based alignment loss results in absolute accuracy improvements of 4.4%, 1.2%, and 6.2% in 5-shot learning over the state of the art for object recognition, fine-grained classification, and cross-domain adaptation, respectively.

Arman Afrasiyabi, Jean-Fran\c{c}ois Lalonde, Christian Gagn\'e• 2019

Related benchmarks

TaskDatasetResultRank
Few-shot classificationtieredImageNet (test)--
282
Few-shot Image ClassificationMini-Imagenet (test)--
235
5-way ClassificationminiImageNet (test)--
231
Few-shot classificationCUB (test)--
145
5-way Few-shot ClassificationMini-Imagenet (test)
1-shot Accuracy65.92
141
5-way Image ClassificationtieredImageNet 5-way (test)
1-shot Acc74.4
117
Few-shot Image ClassificationtieredImageNet (test)--
86
5-way Few-shot Image ClassificationFC100 (test)
1-shot Accuracy45.83
78
Few-shot classificationmini-ImageNet → CUB (test)
Accuracy (5-shot)72.37
75
Few-shot classificationCUB-200-2011 (test)
5-way 1-shot Acc74.22
56
Showing 10 of 16 rows

Other info

Follow for update