A Two-Stage Approach to Few-Shot Learning for Image Recognition
December 10, 2019 ยท Declared Dead ยท ๐ IEEE Transactions on Image Processing
"No code URL or promise found in abstract"
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Authors
Debasmit Das, C. S. George Lee
arXiv ID
1912.04973
Category
cs.LG: Machine Learning
Cross-listed
cs.CV,
eess.IV,
stat.ML
Citations
139
Venue
IEEE Transactions on Image Processing
Last Checked
4 months ago
Abstract
This paper proposes a multi-layer neural network structure for few-shot image recognition of novel categories. The proposed multi-layer neural network architecture encodes transferable knowledge extracted from a large annotated dataset of base categories. This architecture is then applied to novel categories containing only a few samples. The transfer of knowledge is carried out at the feature-extraction and the classification levels distributed across the two training stages. In the first-training stage, we introduce the relative feature to capture the structure of the data as well as obtain a low-dimensional discriminative space. Secondly, we account for the variable variance of different categories by using a network to predict the variance of each class. Classification is then performed by computing the Mahalanobis distance to the mean-class representation in contrast to previous approaches that used the Euclidean distance. In the second-training stage, a category-agnostic mapping is learned from the mean-sample representation to its corresponding class-prototype representation. This is because the mean-sample representation may not accurately represent the novel category prototype. Finally, we evaluate the proposed network structure on four standard few-shot image recognition datasets, where our proposed few-shot learning system produces competitive performance compared to previous work. We also extensively studied and analyzed the contribution of each component of our proposed framework.
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