Literature DB >> 33078383

The role of category- and exemplar-specific experience in ensemble processing of objects.

Oakyoon Cha1, Randolph Blake2, Isabel Gauthier2.   

Abstract

People can relatively easily report summary properties for ensembles of objects, suggesting that this information can enrich visual experience and increase the efficiency of perceptual processing. Here, we ask whether the ability to judge diversity within object arrays improves with experience. We surmised that ensemble judgments would be more accurate for commonly experienced objects, and perhaps even more for objects of expertise like faces. We also expected improvements in ensemble processing with practice with a novel category, and perhaps even more with repeated experience with specific exemplars. We compared the effect of experience on diversity judgments for arrays of objects, with participants being tested with either a small number of repeated exemplars or with a large number of exemplars from the same object category. To explore the role of more prolonged experience, we tested participants with completely novel objects (random blobs), with objects familiar at the category level (cars), and with objects with which observers are experts at subordinate-level recognition (faces). For objects that are novel, participants showed evidence of improved ability to distribute attention. In contrast, for object categories with long-term experience, i.e., faces and cars, performance improved during the experiment but not necessarily due to improved ensemble processing. Practice with specific exemplars did not result in better diversity judgments for all object categories. Considered together, these results suggest that ensemble processing improves with experience. However, experience operates rapidly, the role of experience does not rely on exemplar-level knowledge and may not benefit from subordinate-level expertise.

Entities:  

Keywords:  Diversity judgment; Ensemble perception; Experience; Expertise; Object recognition

Mesh:

Year:  2020        PMID: 33078383     DOI: 10.3758/s13414-020-02162-4

Source DB:  PubMed          Journal:  Atten Percept Psychophys        ISSN: 1943-3921            Impact factor:   2.199


  19 in total

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