首页> 外文会议>Neural Computation and Psychology Workshop; 20040908-10; University of Plymouth(GB) >COMPARING COMPUTATIONAL AND HUMAN MEASURES OF VISUAL SIMILARITY
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COMPARING COMPUTATIONAL AND HUMAN MEASURES OF VISUAL SIMILARITY

机译:比较视觉相似性的计算和人为措施

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There have been many attempts to quantify visual similarity within different categories of objects, which a view to using such measures to predict impaired recognition performance. Although many studies have linked measures of visual similarity to behavioral outcomes associated with object recognition, there has been little research on whether these measures are associated with human ratings of perceived similarity. In this work, we compare similarity measures extracted from Principal Component Analysis, Isometric Feature Mapping and wavelets representations with ratings of human subjects. Our results show that features extracted by calculating the standard deviation of wavelet coefficients provides the closest fit to the human rating data of all the methods we applied here.
机译:已经进行了许多尝试来量化不同类别的对象内的视觉相似性,这是为了使用这种措施来预测受损的识别性能。尽管许多研究将视觉相似性的度量与与对象识别相关的行为结果相关联,但很少有关于这些度量是否与人类对感知相似性的评级相关联的研究。在这项工作中,我们将从主成分分析,等距特征映射和小波表示中提取的相似性度量与人类受试者的评分进行比较。我们的结果表明,通过计算小波系数的标准偏差提取的特征提供了与本文所应用的所有方法的人类评级数据最接近的特征。

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