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Comparing humans to automation in rating photographic aesthetics

机译:在评估摄影美学方面将人与自动化进行比较

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Computer vision researchers have recently developed automated methods for rating the aesthetic appeal of a photograph. Machine learning techniques, applied to large databases of photos, mimic with reasonably good accuracy the mean ratings of online viewers. However, owing to the many factors underlying aesthetics, it is likely that such techniques for rating photos do not generalize well beyond the data on which they are trained. This paper reviews recent attempts to compare human ratings, obtained in a controlled setting, to ratings provided by machine learning techniques. We review methods to obtain meaningful ratings both from selected groups of judges and also from crowd sourcing. We find that state-of-the-art techniques for automatic aesthetic evaluation are only weakly correlated with human ratings. This shows the importance of obtaining data used for training automated systems under carefully controlled conditions.
机译:计算机视觉研究人员最近开发了用于对照片的美学吸引力进行评级的自动方法。应用于大型照片数据库的机器学习技术以相当不错的精度模拟了在线观看者的平均收视率。但是,由于美学的诸多因素,这种对照片进行评级的技术可能无法很好地推广到训练照片的范围之外。本文回顾了最近的尝试,以比较在受控环境中获得的人类评分与机器学习技术提供的评分。我们回顾了从选定的法官组以及众包中获得有意义的评级的方法。我们发现,用于自动美学评估的最新技术与人类评分之间的关​​系微弱。这表明获得在严格控制的条件下用于训练自动化系统的数据的重要性。

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