Image Emotion Analysis Combining Attention Mechanism and Multi-level Correlation

Shuxia Ren, Simin Li
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Abstract

The development of social network has brought a large amount of image information, and the research on image emotion has gradually attracted wide attention. The current image emotion analysis methods based on multi-level features simply splice the features at each level and then classify the emotions, which not only ignores the correlation between features at different levels, but also ignores the synergistic effect between global features and local features. Therefore, this paper proposes an emotion model (MAML) based on mixed attention and multi-level dependence of images, which uses spatial and channel attention mechanisms to extract local emotion region features of images. Bi-directional Long Short Term Memory network (BiLSTM) is used to establish correlation between multi-level image global features. The experimental results of MAML model on artphoto and abstract data sets prove the validity of MAML model.
结合注意机制和多级相关性的图像情感分析
社交网络的发展带来了大量的图像信息,图像情感研究也逐渐引起了广泛关注。目前基于多层次特征的图像情感分析方法只是简单地将各个层次的特征进行拼接,然后进行情感分类,这不仅忽略了不同层次特征之间的相关性,也忽视了全局特征与局部特征之间的协同效应。因此,本文提出了一种基于混合注意和图像多级依赖的情绪模型(MAML),利用空间注意和通道注意机制提取图像的局部情绪区域特征。双向长短期记忆网络(BiLSTM)用于建立多层次图像全局特征之间的相关性。MAML 模型在艺术照片和抽象数据集上的实验结果证明了 MAML 模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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