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Multi-Level Context Pyramid Network for Visual Sentiment Analysis

机译:用于视觉情感分析的多级上下文金字塔网络

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摘要

Sharing our feelings through content with images and short videos is one main way of expression on social networks. Visual content can affect people’s emotions, which makes the task of analyzing the sentimental information of visual content more and more concerned. Most of the current methods focus on how to improve the local emotional representations to get better performance of sentiment analysis and ignore the problem of how to perceive objects of different scales and different emotional intensity in complex scenes. In this paper, based on the alterable scale and multi-level local regional emotional affinity analysis under the global perspective, we propose a multi-level context pyramid network (MCPNet) for visual sentiment analysis by combining local and global representations to improve the classification performance. Firstly, Resnet101 is employed as backbone to obtain multi-level emotional representation representing different degrees of semantic information and detailed information. Next, the multi-scale adaptive context modules (MACM) are proposed to learn the sentiment correlation degree of different regions for different scale in the image, and to extract the multi-scale context features for each level deep representation. Finally, different levels of context features are combined to obtain the multi-cue sentimental feature for image sentiment classification. Extensive experimental results on seven commonly used visual sentiment datasets illustrate that our method outperforms the state-of-the-art methods, especially the accuracy on the FI dataset exceeds 90%.
机译:通过使用图像和短视频共享我们的感受是社交网络上的一种主要表达方式。视觉内容可以影响人们的情感,这使得分析视觉内容的感情信息越来越多的关注。大多数目前的方法都侧重于如何改善当地的情绪表达,以获得更好的情感分析,忽略如何在复杂场景中感知不同尺度和不同情绪强度的问题。在本文中,根据全球视角下的可变规模和多级地方区域情绪亲和力分析,我们提出了一个多级上下文金字塔网络(MCPNET),以通过组合本地和全球陈述来提高分类性能来实现视觉情绪分析。首先,ResET101用作骨干,以获得代表不同学位和详细信息的多级情绪表示。接下来,提出了多尺度自适应上下文模块(MACM)来学习图像中不同规模的不同区域的情感相关度,并提取每个级别深度表示的多尺度上下文特征。最后,组合了不同级别的上下文特征,以获得图像情绪分类的多功能感伤特征。七种常用的视觉情绪数据集的广泛实验结果表明,我们的方法优于最先进的方法,特别是数据集的准确性超过90%。

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