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Non-bias architectural image archive using High Dynamic Range approach

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conference contribution
posted on 2023-05-23, 15:16 authored by Zi Siang SeeZi Siang See, Sheng, LX
The paper examines the imagery information and the qualitative characteristic of archiving non-bias architectural image using High Dynamic Range (HDR) imaging approach. Photography imaging became possible in the period of 19 century, it was a combination of several different scientific discoveries. Architectural photo imaging began with monochrome recording limitation, and the dynamic range recorded was inadequate even with analog color film. Often it was arguable if the photography image would provide reliable imagery information, either for aesthetic visualization purpose or to record accurate imagery information. The paper aims to analyze the limitations and issues that affect visual accuracy of HDR imaging digital workflow, including the environmental technical obstacles. Due to the situations of very contrast lighting condition, the extended dynamic range may be needed for archiving the real-world scene of architectural subject. The paper also explores the possibility of HDR imaging as an improved approach for non-bias architectural imaging archive.

History

Publication title

Proceedings of the 2011 International Conference on Research and Innovation in Information Systems

Editors

'.'

Pagination

1-6

ISBN

9781612842950

Department/School

Faculty of Education

Publisher

IEEE

Place of publication

New York, United States

Event title

2011 International Conference on Research and Innovation in Information Systems

Event Venue

Kuala Lumpur, Malaysia

Date of Event (Start Date)

2011-11-23

Date of Event (End Date)

2011-11-24

Rights statement

Copyright 2011 IEEE

Repository Status

  • Open

Socio-economic Objectives

Digital humanities; Expanding knowledge in education

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