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Totally Looks Like - How Humans Compare, Compared to Machines

机译:完全看起来 - 与机器相比,人类如何比较

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Perceptual judgment of image similarity by humans relies on rich internal representations ranging from low-level features to high-level concepts, scene properties and even cultural associations. Existing methods and datasets attempting to explain perceived similarity use stimuli which arguably do not cover the full breadth of factors that affect human similarity judgments, even those geared toward this goal. We introduce a new dataset dubbed Totally-Looks-Like (TLL) after a popular entertainment website, which contains images paired by humans as being visually similar. The dataset contains 6016 image-pairs from the wild, shedding light upon a rich and diverse set of criteria employed by human beings. We conduct experiments to try to reproduce the pairings via features extracted from state-of-the-art deep convolutional neural networks, as well as additional human experiments to verify the consistency of the collected data. Even though we create conditions to artificially make the matching task increasingly easier, we show that machine-extracted representations perform very poorly in terms of reproducing the matching selected by humans. The results suggest future directions for improvement of learned image representations. Data and code will be available at https://sites.google.com/view/totally-looks-like-dataset.
机译:人类的图像相似性的感知判断依赖于从低级别特征到高级概念,场景属性甚至文化协会的丰富内部表示。试图解释感知相似性的现有方法和数据集使用刺激,这些方法可以使用刺激性地涵盖影响人类相似性判断的完整因素,即使是那些朝向这一目标的人。我们在一个流行的娱乐网站之后介绍了一个被称为完全看起来的(TLL)的新数据集,其中包含人类配对的图像作为视觉上类似的图像。数据集包含野外的6016个图像对,在人类雇用的丰富和多样化的标准上脱颖而出。我们进行实验以尝试通过从最先进的深度卷积神经网络中提取的特征来再现配对,以及额外的人类实验以验证收集数据的一致性。尽管我们创造了人为地使匹配任务的条件越来越容易,但我们表明机器提取的表示在再现人类选择的匹配方面表现得非常差。结果表明了改善学习图像表示的未来方向。数据和代码将在https://sites.google.com/view/totally-looks-like-dataset上使用。

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