Semantic-guided distribution calibrating for few-shot classification

The meta-learning paradigm is a mainstream method to solve the problem of few-shot learning. It constructs multiple tasks through episodic training so that the model can quickly generalize to new tasks. However, episodic training only sample a few training instances (shots) per class for simulating...

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Main Author: Qiu, Guochen
Other Authors: Wen Bihan
Format: Thesis-Master by Coursework
Language:English
Published: Nanyang Technological University 2022
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Online Access:https://hdl.handle.net/10356/155041
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1550412023-07-04T17:02:18Z Semantic-guided distribution calibrating for few-shot classification Qiu, Guochen Wen Bihan School of Electrical and Electronic Engineering Rapid-Rich Object Search (ROSE) Lab bihan.wen@ntu.edu.sg Engineering::Electrical and electronic engineering The meta-learning paradigm is a mainstream method to solve the problem of few-shot learning. It constructs multiple tasks through episodic training so that the model can quickly generalize to new tasks. However, episodic training only sample a few training instances (shots) per class for simulating the test- time scenario, the randomness of sampling and scarcity of data will bring biased feature distribution of the task, which occurs in both meta-training and meta-testing. In this work, we propose a semantic guided adaptive distribution calibrated framework to alleviate this phenomenon, committing to using debiased information to eliminate bias. Semantic Conditional Batch Normalization (SCBN) , is to alleviate the deviations of the same class distribution in different episodic caused by sampling from the level of feature maps. In addition, a semantic Transformer (ST) is introduced to map the support and query set into a new feature space, where their domain gap is smaller. In both modules, the category semantic representation (text or language) is used as a high-level feature to modify the distribution. In this way, debiased semantic representation can make the model not be disturbed by sampling, and adjust the feature distribution adaptively, so that the class distribution can be separated as much as possible in the feature space. Experimental results show that it compares favourably to the previous state-of-the-art results for images only and images combined with semantics-based approaches. Master of Science (Signal Processing) 2022-01-30T12:31:59Z 2022-01-30T12:31:59Z 2021 Thesis-Master by Coursework Qiu, G. (2021). Semantic-guided distribution calibrating for few-shot classification. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/155041 https://hdl.handle.net/10356/155041 en application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Electrical and electronic engineering
spellingShingle Engineering::Electrical and electronic engineering
Qiu, Guochen
Semantic-guided distribution calibrating for few-shot classification
description The meta-learning paradigm is a mainstream method to solve the problem of few-shot learning. It constructs multiple tasks through episodic training so that the model can quickly generalize to new tasks. However, episodic training only sample a few training instances (shots) per class for simulating the test- time scenario, the randomness of sampling and scarcity of data will bring biased feature distribution of the task, which occurs in both meta-training and meta-testing. In this work, we propose a semantic guided adaptive distribution calibrated framework to alleviate this phenomenon, committing to using debiased information to eliminate bias. Semantic Conditional Batch Normalization (SCBN) , is to alleviate the deviations of the same class distribution in different episodic caused by sampling from the level of feature maps. In addition, a semantic Transformer (ST) is introduced to map the support and query set into a new feature space, where their domain gap is smaller. In both modules, the category semantic representation (text or language) is used as a high-level feature to modify the distribution. In this way, debiased semantic representation can make the model not be disturbed by sampling, and adjust the feature distribution adaptively, so that the class distribution can be separated as much as possible in the feature space. Experimental results show that it compares favourably to the previous state-of-the-art results for images only and images combined with semantics-based approaches.
author2 Wen Bihan
author_facet Wen Bihan
Qiu, Guochen
format Thesis-Master by Coursework
author Qiu, Guochen
author_sort Qiu, Guochen
title Semantic-guided distribution calibrating for few-shot classification
title_short Semantic-guided distribution calibrating for few-shot classification
title_full Semantic-guided distribution calibrating for few-shot classification
title_fullStr Semantic-guided distribution calibrating for few-shot classification
title_full_unstemmed Semantic-guided distribution calibrating for few-shot classification
title_sort semantic-guided distribution calibrating for few-shot classification
publisher Nanyang Technological University
publishDate 2022
url https://hdl.handle.net/10356/155041
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