基于少弹学习的深度残余收缩网络

Jiuzhou Liu, Qianwen Zhou, Biyin Zhang
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引用次数: 1

摘要

少镜头图像分类是深度学习领域一个具有挑战性的新兴方向,广泛应用于油井定位、石油无损检测等工业领域。针对传统深度学习方法无法有效提取少拍图像特征的问题,提出了一种基于深度残差收缩网络(deep residual shrinkage network, DRSN)的少拍图像分类算法。为了提高残差网络的特征提取能力,在残差网络中引入了注意机制来构建DRSN;另一方面,我们对小样本数据进行校准,以解决数据分布不均匀的问题,提高在少样本分类任务中的准确率。实验结果表明,本文算法能够有效地进行图像特征提取,并且在少量图像分类任务中具有优异的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Residual Shrinkage Network For Few-Shot Learning
The few-shot image classification is a challenging emerging direction in the field of deep learning, and it is widely used in oil well positioning, nondestructive testing in petroleum and other industrial fields. Aiming at the problem that traditional deep learning methods cannot effectively extract few-shot image features, this paper proposes a few-shot image classification algorithm based on deep residual shrinkage network (DRSN). On the one hand, to improve the ability of feature extraction, the attention mechanism is introduced into the residual network to construct the DRSN. On the other hand, we carry out calibration for small sample data to solve the problem of uneven data distribution and improve accuracy in the few-shot classification tasks. Experimental results show that the algorithm in the paper can perform effective image feature extraction, and have excellent performance in the few-shot classification tasks.
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