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Continual Local Replacement For Few-shot Learning

Posted on:2021-11-12Degree:MasterType:Thesis
Country:ChinaCandidate:C Y LeFull Text:PDF
GTID:2518306017473694Subject:Computer Science and Technology
Abstract/Summary:PDF Full Text Request
The goal of few-shot learning is to learn a model that can recognize novel classes based on one or few of training data.It is challenging mainly due to two aspects:(1)feature deterioration.It lacks good feature representation of novel classes;(2)data deficiency.A few of labeled data could not accurately represent the true data distribution and thus it's hard to learn a good decision function for classification.In this work,we use a sophisticated network architecture to learn better feature representation and focus on the second issue.A novel continual local replacement strategy is proposed to address the data deficiency problem.It takes advantage of the content in unlabeled images to continually enhance labeled ones.Specifically,a pseudo labeling method is adopted to constantly select semantically similar images on the fly.Original labeled images will be locally replaced by the selected images for the next epoch training.In this way,the model can directly learn new semantic information from unlabeled images and the capacity of supervised signals in the embedding space can be significantly enlarged.This allows the model to improve generalization and learn a better classification decision boundary.Our method is conceptually simple and easy to implement.Extensive experiments demonstrate that it can achieve state-of-the-art results on various few-shot image recognition benchmarks.
Keywords/Search Tags:Few-shot learning, semi-supervised learning, transfer learning, image classification
PDF Full Text Request
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