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Discovering visual features for recognizing user's sentiments in social images

机译:发现可视化功能,以识别用户在社会形象中的情绪

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Recently, with the increasing of users and activities in social network service, an image sentiment analysis has been an important keyword for psychological study and commercial marketing. To recognize accurately user's sentiments of the image, it is essential to identify discriminative visual features and then conduct analysis based on observed features. In this paper, we propose two hand-designed features: color composition and SIFT-based shape descriptor. These features are designed based on psychological study and experiments. First, two visual dictionaries are built by Kobayashi's color image scale and Hierarchical clustering. Next, color compositions and SIFT-based descriptors are extracted from image. Then, the set of extracted features are separately transformed into a histogram representation by calculating the occurrences of the respective feature assigned to each visual word in the dictionary. To verify the effectiveness of the proposed features, we apply them to image sentiment analysis for predicting user's polarity and affects. The recognition results were compared with man-labeled ground truth and then showed the performance with an F1-measure results of above 93%.
机译:最近,随着社交网络服务中的用户和活动的增加,图像情绪分析是心理学研究和商业营销的重要关键词。为了认识到准确的用户的观点情绪,必须识别判别视觉特征,然后基于观察到的特征进行分析。在本文中,我们提出了两种手动设计的功能:颜色组成和基于SIFT的形状描述符。这些功能是根据心理学研究和实验设计的。首先,通过Kobayashi的彩色图像刻度和分层群集构建了两个视觉词典。接下来,从图像中提取颜色组合物和基于SIFT的描述符。然后,通过计算分配给字典中的每个视觉字的各个特征的出现,将该组提取特征单独转换成直方图表示。为了验证所提出的功能的有效性,我们将它们应用于图像情绪分析,以预测用户的极性和影响。将识别结果与人标记的地面真理进行比较,然后表现出具有93%以上的F1测量结果的性能。

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