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Can Computers Learn from the Aesthetic Wisdom of the Crowd?

机译:电脑可以从人群的审美智慧中学习吗?

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The social media revolution has led to an abundance of image and video data on the Internet. Since this data is typically annotated, rated, or commented upon by large communities, it provides new opportunities and challenges for computer vision. Social networking and content sharing sites seem to hold the key to the integration of context and semantics into image analysis. In this paper, we explore the use of social media in this regard. We present empirical results obtained on a set of 127,593 images with 3,741,176 tag assignments that were harvested from Flickr, a photo sharing site. We report on how users tag and rate photos and present an approach towards automatically recognizing the aesthetic appeal of images using confidence-based classifiers to alleviate effects due to ambiguously labeled data. Our results indicate that user generated content allows for learning about aesthetic appeal. In particular, established low-level image features seem to enable the recognition of beauty. A reliable recognition of unseemliness, on the other hand, appears to require more elaborate high-level analysis.
机译:社交媒体革命已导致Internet上大量的图像和视频数据。由于此数据通常由大型社区进行注释,评级或评论,因此它为计算机视觉提供了新的机遇和挑战。社交网络和内容共享站点似乎是将上下文和语义集成到图像分析中的关键。在本文中,我们探讨了社交媒体在这方面的使用。我们展示了从照片共享网站Flickr收集的127,593张图像和3,741,176张标签分配中获得的经验结果。我们报告了用户如何对照片进行标记和评分,并提出了一种方法,该方法使用基于置信度的分类器来自动识别图像的美学吸引力,以减轻由于含糊数据而造成的影响。我们的结果表明,用户生成的内容允许您学习美学吸引力。特别是,建立的低级图像功能似乎可以识别美感。另一方面,对不渗透性的可靠认识似乎需要更详尽的高层分析。

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