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The Oddity Detection in Diverse Scenes (ODDS) database: Validated real-world scenes for studying anomaly detection

Many applied screening tasks (e.g., medical image or baggage screening) involve challenging searches for which standard laboratory search is rarely equivalent. For example, whereas laboratory search frequently requires observers to look for precisely defined targets among isolated, non-overlapping i...

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Autores principales: Hout, Michael C., Papesh, Megan H., Masadeh, Saleem, Sandin, Hailey, Walenchok, Stephen C., Post, Phillip, Madrid, Jessica, White, Bryan, Pinto, Juan D. Guevara, Welsh, Julian, Goode, Dre, Skulsky, Rebecca, Rodriguez, Mariana Cazares
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer US 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8966608/
https://www.ncbi.nlm.nih.gov/pubmed/35353316
http://dx.doi.org/10.3758/s13428-022-01816-5
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author Hout, Michael C.
Papesh, Megan H.
Masadeh, Saleem
Sandin, Hailey
Walenchok, Stephen C.
Post, Phillip
Madrid, Jessica
White, Bryan
Pinto, Juan D. Guevara
Welsh, Julian
Goode, Dre
Skulsky, Rebecca
Rodriguez, Mariana Cazares
author_facet Hout, Michael C.
Papesh, Megan H.
Masadeh, Saleem
Sandin, Hailey
Walenchok, Stephen C.
Post, Phillip
Madrid, Jessica
White, Bryan
Pinto, Juan D. Guevara
Welsh, Julian
Goode, Dre
Skulsky, Rebecca
Rodriguez, Mariana Cazares
author_sort Hout, Michael C.
collection PubMed
description Many applied screening tasks (e.g., medical image or baggage screening) involve challenging searches for which standard laboratory search is rarely equivalent. For example, whereas laboratory search frequently requires observers to look for precisely defined targets among isolated, non-overlapping images randomly arrayed on clean backgrounds, medical images present unspecified targets in noisy, yet spatially regular scenes. Those unspecified targets are typically oddities, elements that do not belong. To develop a closer laboratory analogue to this, we created a database of scenes containing subtle, ill-specified “oddity” targets. These scenes have similar perceptual densities and spatial regularities to those found in expert search tasks, and each includes 16 variants of the unedited scene wherein an oddity (a subtle deformation of the scene) is hidden. In Experiment 1, eight volunteers searched thousands of scene variants for an oddity. Regardless of their search accuracy, they were then shown the highlighted anomaly and rated its subtlety. Subtlety ratings reliably predicted search performance (accuracy and response times) and did so better than image statistics. In Experiment 2, we conducted a conceptual replication in which a larger group of naïve searchers scanned subsets of the scene variants. Prior subtlety ratings reliably predicted search outcomes. Whereas medical image targets are difficult for naïve searchers to detect, our database contains thousands of interior and exterior scenes that vary in difficulty, but are nevertheless searchable by novices. In this way, the stimuli will be useful for studying visual search as it typically occurs in expert domains: Ill-specified search for anomalies in noisy displays.
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spelling pubmed-89666082022-03-31 The Oddity Detection in Diverse Scenes (ODDS) database: Validated real-world scenes for studying anomaly detection Hout, Michael C. Papesh, Megan H. Masadeh, Saleem Sandin, Hailey Walenchok, Stephen C. Post, Phillip Madrid, Jessica White, Bryan Pinto, Juan D. Guevara Welsh, Julian Goode, Dre Skulsky, Rebecca Rodriguez, Mariana Cazares Behav Res Methods Article Many applied screening tasks (e.g., medical image or baggage screening) involve challenging searches for which standard laboratory search is rarely equivalent. For example, whereas laboratory search frequently requires observers to look for precisely defined targets among isolated, non-overlapping images randomly arrayed on clean backgrounds, medical images present unspecified targets in noisy, yet spatially regular scenes. Those unspecified targets are typically oddities, elements that do not belong. To develop a closer laboratory analogue to this, we created a database of scenes containing subtle, ill-specified “oddity” targets. These scenes have similar perceptual densities and spatial regularities to those found in expert search tasks, and each includes 16 variants of the unedited scene wherein an oddity (a subtle deformation of the scene) is hidden. In Experiment 1, eight volunteers searched thousands of scene variants for an oddity. Regardless of their search accuracy, they were then shown the highlighted anomaly and rated its subtlety. Subtlety ratings reliably predicted search performance (accuracy and response times) and did so better than image statistics. In Experiment 2, we conducted a conceptual replication in which a larger group of naïve searchers scanned subsets of the scene variants. Prior subtlety ratings reliably predicted search outcomes. Whereas medical image targets are difficult for naïve searchers to detect, our database contains thousands of interior and exterior scenes that vary in difficulty, but are nevertheless searchable by novices. In this way, the stimuli will be useful for studying visual search as it typically occurs in expert domains: Ill-specified search for anomalies in noisy displays. Springer US 2022-03-30 2023 /pmc/articles/PMC8966608/ /pubmed/35353316 http://dx.doi.org/10.3758/s13428-022-01816-5 Text en © This is a U.S. government work and not under copyright protection in the U.S.; foreign copyright protection may apply 2022 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Article
Hout, Michael C.
Papesh, Megan H.
Masadeh, Saleem
Sandin, Hailey
Walenchok, Stephen C.
Post, Phillip
Madrid, Jessica
White, Bryan
Pinto, Juan D. Guevara
Welsh, Julian
Goode, Dre
Skulsky, Rebecca
Rodriguez, Mariana Cazares
The Oddity Detection in Diverse Scenes (ODDS) database: Validated real-world scenes for studying anomaly detection
title The Oddity Detection in Diverse Scenes (ODDS) database: Validated real-world scenes for studying anomaly detection
title_full The Oddity Detection in Diverse Scenes (ODDS) database: Validated real-world scenes for studying anomaly detection
title_fullStr The Oddity Detection in Diverse Scenes (ODDS) database: Validated real-world scenes for studying anomaly detection
title_full_unstemmed The Oddity Detection in Diverse Scenes (ODDS) database: Validated real-world scenes for studying anomaly detection
title_short The Oddity Detection in Diverse Scenes (ODDS) database: Validated real-world scenes for studying anomaly detection
title_sort oddity detection in diverse scenes (odds) database: validated real-world scenes for studying anomaly detection
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8966608/
https://www.ncbi.nlm.nih.gov/pubmed/35353316
http://dx.doi.org/10.3758/s13428-022-01816-5
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