4.7 Article

Piecewise Classifier Mappings: Learning Fine-Grained Learners for Novel Categories With Few Examples

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 28, Issue 12, Pages 6116-6125

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2019.2924811

Keywords

Computer vision; fine-grained image recognition; few-shot learning; learning to learn

Funding

  1. National Natural Science Foundation of China [61772256, DE170101259]
  2. program A for Outstanding Ph.D. candidate of Nanjing University [201702A010]
  3. CRC GeoVision Project
  4. Australian Research Council [DE170101259] Funding Source: Australian Research Council

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Humans are capable of learning a new fine-grained concept with very little supervision, e.g., few exemplary images for a species of bird, yet our best deep learning systems need hundreds or thousands of labeled examples. In this paper, we try to reduce this gap by studying the fine-grained image recognition problem in a challenging few-shot learning setting, termed few-shot fine-grained recognition (FSFG). The task of FSFG requires the learning systems to build classifiers for the novel fine-grained categories from few examples (only one or less than five). To solve this problem, we propose an end-to-end trainable deep network, which is inspired by the state-of-the-art fine-grained recognition model and is tailored for the FSFG task. Specifically, our network consists of a bilinear feature learning module and a classifier mapping module: while the former encodes the discriminative information of an exemplar image into a feature vector, the latter maps the intermediate feature into the decision boundary of the novel category. The key novelty of our model is a piecewise mappings function in the classifier mapping module, which generates the decision boundary via learning a set of more attainable sub-classifiers in a more parameter-economic way. We learn the exemplar-to-classifier mapping based on an auxiliary dataset in a meta-learning fashion, which is expected to be able to generalize to novel categories. By conducting comprehensive experiments on three fine-grained datasets, we demonstrate that the proposed method achieves superior performance over the competing baselines.

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