We extend first-order model agnostic meta-learning algorithms (including FOMAML and Reptile) to image segmentation, present a novel neural network architecture built for fast learning which we call EfficientLab, and leverage a formal definition of the test error of meta-learning algorithms to decrease error on out of distribution tasks. We show state of the art results on the FSS-1000 dataset by meta-training EfficientLab with FOMAML and using Bayesian optimization to infer the optimal test-time adaptation routine hyperparameters. We also construct a small benchmark dataset, FP-k, for the empirical study of how meta-learning systems perform in both few- and many-shot settings. On the FP-k dataset, we show that meta-learned initializations provide value for canonical few-shot image segmentation but their performance is quickly matched by conventional transfer learning with performance being equal beyond 10 labeled examples. Our code, meta-learned model, and the FP-k dataset are available at https://github.com/ml4ai/mliis .
Meta-Learning Initializations for Image Segmentation
EfficientLab, a novel neural network architecture, combined with FOMAML meta-learning and Bayesian optimization, achieves state-of-the-art results in few-shot image segmentation.
- Year
- 2019
- Venue
- meta-learning-initializations-for-image-2
- Authors
- 4
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- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/1912.06290v4ARXIV-DEFAULT
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