基于特征对比迁移学习的短镜头长尾声纳图像分类

IF 3.7 3区 计算机科学 Q2 TELECOMMUNICATIONS
Zhongyu Bai;Hongli Xu;Qichuan Ding;Xiangyue Zhang
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引用次数: 0

摘要

由于声纳样本的可用性有限和长尾分布,声纳图像分类具有挑战性。本文提出了一种基于特征对比迁移学习(FCTL)的多镜头长尾声纳图像分类框架。该框架结合了迁移学习和对比学习,以提高模型在有限标记数据下的性能。首先,深度卷积神经网络(CNN)在大规模图像数据集上进行预训练,以学习一般特征表示。然后,利用对比学习使正样本对之间的相似性最大化,使正样本对与负样本对之间的相似性最小化。具体来说,通过高斯特征增强方法生成正样本,而批中剩余的样本为负样本。此外,采用平衡采样策略对长尾样本的不平衡特征分布进行优化。在两种不同的声纳图像数据集上的实验表明,FCTL框架在少量长尾声纳图像分类任务中优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Contrastive Transfer Learning for Few-Shot Long-Tail Sonar Image Classification
Sonar image classification is challenging due to the limited availability and long-tail distribution of labeled sonar samples. In this work, a Feature Contrastive Transfer Learning (FCTL) framework is proposed for few-shot long-tailed sonar image classification. The proposed framework combines transfer learning and contrastive learning to improve model performance under limited labeled data. First, a deep convolutional neural network (CNN) is pre-trained on a large-scale image dataset to learn general feature representations. Then, contrastive learning is employed to maximize the similarity between positive sample pairs and minimize the similarity between positive and negative sample pairs. Specifically, positive samples are generated through a Gaussian feature enhancement method, while the remaining samples in a batch are negative. In addition, a balanced sampling strategy is employed to optimize the unbalanced feature distribution of long-tailed samples. Experiments on two different sonar image datasets demonstrate that the FCTL framework outperforms existing methods in few-shot long-tailed sonar image classification tasks.
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来源期刊
IEEE Communications Letters
IEEE Communications Letters 工程技术-电信学
CiteScore
8.10
自引率
7.30%
发文量
590
审稿时长
2.8 months
期刊介绍: The IEEE Communications Letters publishes short papers in a rapid publication cycle on advances in the state-of-the-art of communication over different media and channels including wire, underground, waveguide, optical fiber, and storage channels. Both theoretical contributions (including new techniques, concepts, and analyses) and practical contributions (including system experiments and prototypes, and new applications) are encouraged. This journal focuses on the physical layer and the link layer of communication systems.
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