On the correlation between second order texture features and human observer detection performance in digital images.

dc.contributor.author

Nisbett, William H

dc.contributor.author

Kavuri, Amar

dc.contributor.author

Das, Mini

dc.date.accessioned

2023-08-15T17:26:35Z

dc.date.available

2023-08-15T17:26:35Z

dc.date.issued

2020-08

dc.date.updated

2023-08-15T17:26:33Z

dc.description.abstract

Image texture, the relative spatial arrangement of intensity values in an image, encodes valuable information about the scene. As it stands, much of this potential information remains untapped. Understanding how to decipher textural details would afford another method of extracting knowledge of the physical world from images. In this work, we attempt to bridge the gap in research between quantitative texture analysis and the visual perception of textures. The impact of changes in image texture on human observer's ability to perform signal detection and localization tasks in complex digital images is not understood. We examine this critical question by studying task-based human observer performance in detecting and localizing signals in tomographic breast images. We have also investigated how these changes impact the formation of second-order image texture. We used digital breast tomosynthesis (DBT) an FDA approved tomographic X-ray breast imaging method as the modality of choice to show our preliminary results. Our human observer studies involve localization ROC (LROC) studies for low contrast mass detection in DBT. Simulated images are used as they offer the benefit of known ground truth. Our results prove that changes in system geometry or processing leads to changes in image texture magnitudes. We show that the variations in several well-known texture features estimated in digital images correlate with human observer detection-localization performance for signals embedded in them. This insight can allow efficient and practical techniques to identify the best imaging system design and algorithms or filtering tools by examining the changes in these texture features. This concept linking texture feature estimates and task based image quality assessment can be extended to several other imaging modalities and applications as well. It can also offer feedback in system and algorithm designs with a goal to improve perceptual benefits. Broader impact can be in wide array of areas including imaging system design, image processing, data science, machine learning, computer vision, perceptual and vision science. Our results also point to the caution that must be exercised in using these texture features as image-based radiomic features or as predictive markers for risk assessment as they are sensitive to system or image processing changes.

dc.identifier

10.1038/s41598-020-69816-z

dc.identifier.issn

2045-2322

dc.identifier.issn

2045-2322

dc.identifier.uri

https://hdl.handle.net/10161/28726

dc.language

eng

dc.publisher

Springer Science and Business Media LLC

dc.relation.ispartof

Scientific reports

dc.relation.isversionof

10.1038/s41598-020-69816-z

dc.subject

Humans

dc.subject

Breast Neoplasms

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Observer Variation

dc.subject

Mammography

dc.subject

ROC Curve

dc.subject

Visual Perception

dc.subject

Image Processing, Computer-Assisted

dc.subject

Female

dc.title

On the correlation between second order texture features and human observer detection performance in digital images.

dc.type

Journal article

duke.contributor.orcid

Kavuri, Amar|0009-0006-8325-3207

pubs.begin-page

13510

pubs.issue

1

pubs.organisational-group

Duke

pubs.organisational-group

Staff

pubs.publication-status

Published

pubs.volume

10

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