SCNet:基于自相关和交叉空间相关注意的少拍图像分类

IF 5.4 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Congqing He , Ding Xu , Ke Gong , Fusen Guo , Dapeng Wei
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引用次数: 0

摘要

最近,few-shot学习因其快速适应和学习新任务的能力而引起了各行各业的广泛关注。然而,现有的方法往往难以捕捉类中的特征多样性,并在支持和查询图像之间对齐特征,从而导致性能不佳。为了解决这些挑战,我们提出了SCNet,这是一种新的少量图像分类框架,利用自相关和跨空间相关的注意机制来增强特征提取和对齐。具体来说,我们引入了一个自相关关注模块,该模块通过在基本图像特征中定位目标区域来关注关键的局部特征,从而增强了从每张图像中独立提取判别特征的能力。此外,我们设计了一个跨空间相关注意模块来捕获支持图像和查询图像之间的共享特征,生成一个信息丰富的共同注意图,以改善不同图像之间的特征对齐。此外,我们引入了一种新的损失函数,它结合了基于标签的分类损失和基于度量的损失,从而减轻了元测试期间的过拟合,并增强了查询嵌入与类别原型的一致性。在三个少镜头基准数据集上的实验表明,所提出的SCNet模型明显优于目前最先进的少镜头图像分类模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SCNet: Few-shot image classification via self-correlational and cross spatial-correlation attention
Recently, few-shot learning has gained significant attention across various industries due to its ability to rapidly adapt and learn new tasks with few labeled training data. However, existing methods often struggle with capturing feature diversity within classes and aligning features between support and query images, leading to sub-optimal performance. To tackle these challenges, we propose SCNet, a novel few-shot image classification framework that leverages self-correlational and cross spatial-correlation attention mechanisms to enhance feature extraction and alignment. Specifically, we introduce a Self-Correlational Attention module that focuses on critical local features by locating target regions within basic image features, enhancing the extraction of discriminative features from each image independently. Additionally, we design a Cross Spatial-Correlation Attention module to capture shared features between support and query images, generating an informative co-attention map that improves feature alignment across different images. Furthermore, we introduce a novel loss function that combines label-based classification loss and metric-based loss, which mitigates overfitting during meta-testing and enhances alignment of query embeddings with category prototypes. Experiments on three few-shot benchmark datasets show that the proposed SCNet model significantly outperforms state-of-the-art few-shot image classification models.
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来源期刊
Engineering Science and Technology-An International Journal-Jestech
Engineering Science and Technology-An International Journal-Jestech Materials Science-Electronic, Optical and Magnetic Materials
CiteScore
11.20
自引率
3.50%
发文量
153
审稿时长
22 days
期刊介绍: Engineering Science and Technology, an International Journal (JESTECH) (formerly Technology), a peer-reviewed quarterly engineering journal, publishes both theoretical and experimental high quality papers of permanent interest, not previously published in journals, in the field of engineering and applied science which aims to promote the theory and practice of technology and engineering. In addition to peer-reviewed original research papers, the Editorial Board welcomes original research reports, state-of-the-art reviews and communications in the broadly defined field of engineering science and technology. The scope of JESTECH includes a wide spectrum of subjects including: -Electrical/Electronics and Computer Engineering (Biomedical Engineering and Instrumentation; Coding, Cryptography, and Information Protection; Communications, Networks, Mobile Computing and Distributed Systems; Compilers and Operating Systems; Computer Architecture, Parallel Processing, and Dependability; Computer Vision and Robotics; Control Theory; Electromagnetic Waves, Microwave Techniques and Antennas; Embedded Systems; Integrated Circuits, VLSI Design, Testing, and CAD; Microelectromechanical Systems; Microelectronics, and Electronic Devices and Circuits; Power, Energy and Energy Conversion Systems; Signal, Image, and Speech Processing) -Mechanical and Civil Engineering (Automotive Technologies; Biomechanics; Construction Materials; Design and Manufacturing; Dynamics and Control; Energy Generation, Utilization, Conversion, and Storage; Fluid Mechanics and Hydraulics; Heat and Mass Transfer; Micro-Nano Sciences; Renewable and Sustainable Energy Technologies; Robotics and Mechatronics; Solid Mechanics and Structure; Thermal Sciences) -Metallurgical and Materials Engineering (Advanced Materials Science; Biomaterials; Ceramic and Inorgnanic Materials; Electronic-Magnetic Materials; Energy and Environment; Materials Characterizastion; Metallurgy; Polymers and Nanocomposites)
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