Affiliation:
1. Department of Cognitive Sciences, University of California, Irvine, CA 92697
2. Digital Imaging Solutions, Canon USA, Irvine, CA 92618
3. Department of Neurobiology and Behavior, University of California, Irvine, CA 92697
Abstract
[C. Koch, S. Ullman,
Hum. Neurobiol.
4
, 219–227 (1985)] proposed a 2D topographical salience map that took feature-map outputs as its input and represented the importance “saliency” of the feature inputs at each location as a real number. The computation on the map, “winner-take-all,” was used to predict action priority. We propose that the same or a similar map is used to compute centroid judgments, the center of a cloud of diverse items. [P. Sun, V. Chu, G. Sperling,
Atten. Percept. Psychophys.
83
, 934–955 (2021)] demonstrated that following a 250-msec exposure of a 24-dot array of 3 intermixed colors, subjects could accurately report the centroid of each dot color, thereby indicating that these subjects had at least three salience maps. Here, we use a postcue, partial-report paradigm to determine how many more salience maps subjects might have. In 11 experiments, subjects viewed 0.3-s flashes of 28 to 32 item arrays composed of M, M = 3,...,8, different features followed by a cue to mouse-click the centroid of items of just the post-cued feature. Ideal detector response analyses show that subjects utilized at least 12 to 17 stimulus items. By determining whether a subject’s performance in (M-1)-feature experiments could/could-not predict performance in M-feature experiments, we conclude that one subject has at least 7 and the other two have at least five salience maps. A computational model shows that the primary performance-limiting factors are channel capacity for representing so many concurrently presented groups of items and working-memory capacity for so many computed centroids.
Publisher
Proceedings of the National Academy of Sciences
Cited by
4 articles.
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