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Impact of feature saliency on visual category learning

机译:特征显着性对视觉类别学习的影响

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摘要

People have to sort numerous objects into a large number of meaningful categories while operating in varying contexts. This requires identifying the visual features that best predict the ‘essence’ of objects (e.g., edibility), rather than categorizing objects based on the most salient features in a given context. To gain this capacity, visual category learning (VCL) relies on multiple cognitive processes. These may include unsupervised statistical learning, that requires observing multiple objects for learning the statistics of their features. Other learning processes enable incorporating different sources of supervisory information, alongside the visual features of the categorized objects, from which the categorical relations between few objects can be deduced. These deductions enable inferring that objects from the same category may differ from one another in some high-saliency feature dimensions, whereas lower-saliency feature dimensions can best differentiate objects from distinct categories. Here I illustrate how feature saliency affects VCL, by also discussing kinds of supervisory information enabling reflective categorization. Arguably, principles debated here are often being ignored in categorization studies.
机译:人们必须在不同的上下文中进行操作时,将大量对象分类为大量有意义的类别。这需要确定最能预测对象“本质”的视觉特征(例如,可食性),而不是根据给定上下文中最显着的特征对对象进行分类。为了获得这种能力,视觉类别学习(VCL)依赖于多个认知过程。这些可能包括无监督的统计学习,需要观察多个对象以学习其特征的统计信息。其他学习过程可以将不同的管理信息源与分类对象的视觉特征结合起来,从中可以推断出几个对象之间的分类关系。通过这些推论,可以推断出同一类别的对象在某些高显着性特征维上可能彼此不同,而较低显着性特征维则可以最好地区分不同类别的对象。在这里,我还将通过讨论实现反射分类的各种监管信息来说明功能显着性如何影响VCL。可以说,这里讨论的原理在分类研究中经常被忽略。

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