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Affective Prediction in Photographic Images Using Probabilistic Affective Model

机译:使用概率情感模型的摄影图像中的情感预测

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With increasing the importance of affective computing, it becomes necessary to retrieve and process images according to human affects or preference. However, judging such affective qualities of images is a highly subjective task. In spite of the lack of firm rules, certain features in images are believed to be more related than certain others. In this paper, we suggest predicting certain affective features include in an image using color composition that constitutes the scene. Using such a feature is inspired from Kobayashi's color scale that studies the relation between colors/color compositions and human's affects. Thus, we propose a Probabilistic Affective Model (PAM) to estimate the probabilities that an image is related to certain affective features. For this, we segment an image using mean-shift clustering algorithm, and extract more important regions, which are called seed regions, based on their properties. Thereafter, we find the dominant color compositions among those seed regions and their neighboring regions. Finally, from such color compositions, we infer the numerical ratings for some affective features. To assess the effectiveness of our PAM, we compared its results with 52 users' affective judgments. It was tested with online photo images, then the results show our PAM produced the recall of 85.22% and the precision of 78.16% on average. Potential applications include content-based image retrieval and design of web page interfaces.
机译:随着情感计算的重要性,有必要根据人类影响或偏好来检索和处理图像。然而,判断这种图像的这种情感品质是一个非常主观的任务。尽管缺乏公司规则,但图像中的某些功能被认为比某些其他特征更相关。在本文中,我们建议预测使用构成场景的颜色组合物的图像中包括的某些情感特征。使用这种特征是激发了Kobayashi的色标,这些颜色标度研究了颜色/颜色组成和人类影响之间的关系。因此,我们提出了一个概率的情感模型(PAM)来估计图像与某些情感特征有关的概率。为此,我们使用平均移位聚类算法分段图像,并提取基于其特性的更重要的区域,这些区域称为种子区域。此后,我们在那些种子区域和邻近地区找到了主导颜色组合。最后,从这些颜色组合物中,我们推断数值额定值以实现一些情感特征。为了评估我们PAM的有效性,我们将其结果与52名用户的情感判断进行了比较。它与在线照片图像测试,结果表明我们的PAM生产的召回量为85.22%,平均精度为78.16%。潜在应用包括基于内容的图像检索和网页接口的设计。

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