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Study on predicting sentiment from images using categorical and sentimental keyword-based image retrieval

机译:基于分类和情感关键词的图像检索从图像中预测情感的研究

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摘要

Visual stimuli are the most sensitive stimulus to affect human sentiments. Many researches have attempted to find the relationship between visual elements in images and sentimental elements using statistical approaches. In many cases, the range of sentiment that affects humans varies with image categories, such as landscapes, portraits, sports, and still life. Therefore, to enhance the performance of sentiment prediction, an individual prediction model must be established for each image category. However, collecting much ground truth sentiment data is one of the obstacles encountered by studies on this field. In this paper, we propose an approach that acquires a training data set for category classification and predicting sentiments from images. Using this approach, we collect a training data set and establish a predictor for sentiments from images. First, we estimate the image category from a given image, and then we predict the sentiment as coordinates on the arousal-valence space using the predictor of an estimated category. We show that the performance of our approach approximates performance using ground truth data. Based on our experiments, we argue that our approach, which utilizes big data on the web as the training set for predicting content sentiment, is useful for practical purposes.
机译:视觉刺激是影响人类情感的最敏感刺激。许多研究已经尝试使用统计方法来发现图像中的视觉元素与情感元素之间的关系。在许多情况下,影响人类的情感范围随图像类别而变化,例如风景,肖像,运动和静物。因此,为了增强情感预测的性能,必须为每个图像类别建立一个单独的预测模型。然而,收集大量地面真实情绪数据是该领域研究遇到的障碍之一。在本文中,我们提出了一种获取训练数据集以进行类别分类和从图像预测情绪的方法。使用这种方法,我们收集了训练数据集并为图像中的情绪建立了预测器。首先,我们从给定的图像中估计图像类别,然后使用估计类别的预测值,将情绪作为唤醒价空间上的坐标进行预测。我们证明,使用地面真实数据,我们的方法的性能近似于性能。根据我们的实验,我们认为我们的方法利用网络上的大数据作为预测内容情感的训练集,对于实际目的是有用的。

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