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Multi-Task Attribute-Fusion Model for Fine-grained Image Recognition

机译:微粒图像识别的多任务属性 - 融合模型

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Attribute information in fine-grained image recognition often provides more accurate and rich information related to categories. How to effectively combine such knowledge to guide image classification tasks has been one of the research hotspots in computer vision in recent years. We believe that using the association relationship between attributes to fuse attribute information can obtain a more accurate representation of the image. In this paper, we propose a novel Multi-Task Attribute Fusion Model (MTAF) which makes two major improvements to the traditional multi-task learning framework: 1) Attribute-Aware Feature Discrimination: combine the spatial attention and the channel attention mechanism to enhance the feature map of the CNN, so that attribute can be associated to important positions and important channels of the image: 2) Transformer-Based Feature Fusion: introduce the Transformer model to better learn the logical association between attributes, so that the reconstructed features are able to achieve a best classification performance. We have verified our algorithm on two datasets. one is the own-collected medical dataset for thyroid benign and malignant identification, and the other is an open dataset widely used for fine-grained image recognition. Experimental results on both datasets demonstrate that the proposed method can achieve higher classification accuracy than baselines.
机译:细粒度图像识别中的属性信息通常提供与类别相关的更准确和丰富的信息。如何有效地结合这些知识来指导图像分类任务是近年来计算机视觉中的研究热点之一。我们认为,使用属性之间的关联关系到熔断器属性信息可以获得更准确的图像表示。在本文中,我们提出了一种新的多任务属性融合模型(MTAF),它对传统的多任务学习框架进行了两个重大改进:1)属性感知功能歧视:结合空间关注和渠道注意机制来增强CNN的特征映射,使属性可以与图像的重要位置和重要通道相关联:2)基于变压器的特征融合:引入变压器模型以更好地学习属性之间的逻辑关联,从而实现重建的功能能够达到最佳分类性能。我们已经在两个数据集中验证了我们的算法。一个是甲状腺良性和恶性识别的自己收集的医疗数据集,另一个是广泛的数据集,广泛用于细粒度的图像识别。两个数据集的实验结果表明,所提出的方法可以实现比基线更高的分类精度。

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