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Delta-encoder: an effective sample synthesis method for few-shot object recognition
Eli Schwartz; Leonid Karlinsky; Joseph Shtok; Sivan Harary; Mattias Marder; Rogerio Feris; Abhishek Kumar; Raja Giryes; Alex M. Bronstein

Abstract
Learning to classify new categories based on just one or a few examples is a long-standing challenge in modern computer vision. In this work, we proposes a simple yet effective method for few-shot (and one-shot) object recognition. Our approach is based on a modified auto-encoder, denoted Delta-encoder, that learns to synthesize new samples for an unseen category just by seeing few examples from it. The synthesized samples are then used to train a classifier. The proposed approach learns to both extract transferable intra-class deformations, or "deltas", between same-class pairs of training examples, and to apply those deltas to the few provided examples of a novel class (unseen during training) in order to efficiently synthesize samples from that new class. The proposed method improves over the state-of-the-art in one-shot object-recognition and compares favorably in the few-shot case. Upon acceptance code will be made available.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| few-shot-image-classification-on-caltech-256 | Delta-encoder | Accuracy: 73.2 |
| few-shot-image-classification-on-cifar100-5 | Delta-encoder | Accuracy: 66.7 |
| few-shot-image-classification-on-cub-200-5-1 | Delta-encoder | Accuracy: 69.8 |
| few-shot-image-classification-on-mini-2 | Delta-encoder | Accuracy: 59.9 |
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