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Dahyun Kang Heeseung Kwon Juhong Min Minsu Cho

Abstract
We propose to address the problem of few-shot classification by meta-learning "what to observe" and "where to attend" in a relational perspective. Our method leverages relational patterns within and between images via self-correlational representation (SCR) and cross-correlational attention (CCA). Within each image, the SCR module transforms a base feature map into a self-correlation tensor and learns to extract structural patterns from the tensor. Between the images, the CCA module computes cross-correlation between two image representations and learns to produce co-attention between them. Our Relational Embedding Network (RENet) combines the two relational modules to learn relational embedding in an end-to-end manner. In experimental evaluation, it achieves consistent improvements over state-of-the-art methods on four widely used few-shot classification benchmarks of miniImageNet, tieredImageNet, CUB-200-2011, and CIFAR-FS.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| few-shot-image-classification-on-cifar-fs-5 | RENet | Accuracy: 74.51 |
| few-shot-image-classification-on-cifar-fs-5-1 | RENet | Accuracy: 86.60 |
| few-shot-image-classification-on-cub-200-5 | RENet | Accuracy: 91.11 |
| few-shot-image-classification-on-cub-200-5-1 | RENet | Accuracy: 79.49 |
| few-shot-image-classification-on-mini-2 | RENet | Accuracy: 67.60 |
| few-shot-image-classification-on-mini-3 | RENet | Accuracy: 82.58 |
| few-shot-image-classification-on-tiered | RENet | Accuracy: 71.61 |
| few-shot-image-classification-on-tiered-1 | RENet | Accuracy: 85.28 |
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