The pictures by category and similarity (PiCS) database: a multidimensional scaling database of 1200 images across 20 categories
The pictures by category and similarity (PiCS) database: a multidimensional scaling database of 1200 images across 20 categories
Visual similarity is an essential concept in vision science, and the methods used to quantify similarity have recently expanded in the areas of human-derived ratings and computer vision methodologies. Researchers who want to manipulate similarity between images (e.g., in a visual search, categorization, or memory task) often use the aforementioned methods, which require substantial, additional data collection prior to the primary task of interest. To alleviate this problem, we have developed an openly available database that uses multidimensional scaling (MDS) to model the similarity among 1200 items spread across 20 object categories, thereby allowing researchers to utilize similarity ratings within and between categories. In this article, we document the development of this database, including: 1) collecting similarity ratings using the spatial arrangement method across two sites, 2) our computational approach with MDS, and 3) validation of the MDS space by comparing SpAM-derived distances to direct similarity ratings. The database and similarity data provided between items (and across categories) will be useful to researchers wanting to manipulate or control similarity in their studies.
Categorization, Image database, Multidimensional scaling, Visual similarity
Robbins, Arryn
4ded1188-09e9-41f7-89c5-9623818ebaa8
Hout, Michael C.
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Ercolino, Ashley
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Schmidt, Joseph
92238a90-6f01-49ff-8376-ec21dafd88d7
Godwin, Hayward J.
df22dc0c-01d1-440a-a369-a763801851e5
MacDonald, Justin
5052a37d-7d7a-4690-ba00-284849d6f83e
30 June 2025
Robbins, Arryn
4ded1188-09e9-41f7-89c5-9623818ebaa8
Hout, Michael C.
79882490-f79b-4e7d-990a-fdcdcb87f3ce
Ercolino, Ashley
c74c3f63-3235-41af-ac9a-33fde254bd84
Schmidt, Joseph
92238a90-6f01-49ff-8376-ec21dafd88d7
Godwin, Hayward J.
df22dc0c-01d1-440a-a369-a763801851e5
MacDonald, Justin
5052a37d-7d7a-4690-ba00-284849d6f83e
Robbins, Arryn, Hout, Michael C., Ercolino, Ashley, Schmidt, Joseph, Godwin, Hayward J. and MacDonald, Justin
(2025)
The pictures by category and similarity (PiCS) database: a multidimensional scaling database of 1200 images across 20 categories.
Behavior Research Methods, 57 (8), [212].
(doi:10.3758/s13428-025-02732-0).
Abstract
Visual similarity is an essential concept in vision science, and the methods used to quantify similarity have recently expanded in the areas of human-derived ratings and computer vision methodologies. Researchers who want to manipulate similarity between images (e.g., in a visual search, categorization, or memory task) often use the aforementioned methods, which require substantial, additional data collection prior to the primary task of interest. To alleviate this problem, we have developed an openly available database that uses multidimensional scaling (MDS) to model the similarity among 1200 items spread across 20 object categories, thereby allowing researchers to utilize similarity ratings within and between categories. In this article, we document the development of this database, including: 1) collecting similarity ratings using the spatial arrangement method across two sites, 2) our computational approach with MDS, and 3) validation of the MDS space by comparing SpAM-derived distances to direct similarity ratings. The database and similarity data provided between items (and across categories) will be useful to researchers wanting to manipulate or control similarity in their studies.
Text
Robbins et al _PiCS Database_Rev2
- Accepted Manuscript
Text
s13428-025-02732-0
- Version of Record
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Accepted/In Press date: 29 May 2025
Published date: 30 June 2025
Keywords:
Categorization, Image database, Multidimensional scaling, Visual similarity
Identifiers
Local EPrints ID: 502942
URI: http://eprints.soton.ac.uk/id/eprint/502942
ISSN: 1554-351X
PURE UUID: 0e5d21a4-7a8a-43b5-a6dd-744030a59048
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Date deposited: 14 Jul 2025 16:44
Last modified: 22 Aug 2025 02:01
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Contributors
Author:
Arryn Robbins
Author:
Michael C. Hout
Author:
Ashley Ercolino
Author:
Joseph Schmidt
Author:
Justin MacDonald
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