Staffordshire University logo
STORE - Staffordshire Online Repository

Specular-based illumination estimation using blind signal separation techniques

BADAWI, Waleed, Chibelushi, C.C., PATWARY, Mohammad and MONIRI, Mansour (2012) Specular-based illumination estimation using blind signal separation techniques. IET Image Processing, 6 (8). pp. 1181-1191. ISSN 1751-9659

Full text not available from this repository.

Abstract or description

Illumination estimation is important in many approaches to colour constancy, where object colour is measured without the effect of the spectral distribution of the illumination. Many illumination estimation methods for achieving colour constancy, particularly those based on the dichromatic reflection model, have performance limitations because they operate on images composed of blended specular and diffuse reflection components, and they may require image segmentation into regions; segmentation is a well-known image-processing challenge. This study proposes an illumination estimation method, which uses constrained blind signal separation anchored on the dichromatic reflection model, connected to a linear model of the illumination spectrum. Unlike conventional methods that use mixed-image components, the proposed method uses a specular image component extracted explicitly by blind signal separation. This can yield better illumination estimates, and blind signal separation can avoid image segmentation problems. Results of experiments show that the proposed method can recover the illumination spectral distribution, and that the extracted specular component yields better illumination estimation than mixed components. Similar results were observed for the two blind signal separation techniques assessed in this study; namely, the spatially constrained FastICA and independent component analysis based on mutual information.

Item Type: Article
Faculty: Previous Faculty of Computing, Engineering and Sciences > Computing
Depositing User: Claude CHIBELUSHI
Date Deposited: 10 Apr 2013 19:19
Last Modified: 24 Feb 2023 13:37
URI: https://eprints.staffs.ac.uk/id/eprint/780

Actions (login required)

View Item View Item

DisabledGo Staffordshire University is a recognised   Investor in People. Sustain Staffs
Legal | Freedom of Information | Site Map | Job Vacancies
Staffordshire University, College Road, Stoke-on-Trent, Staffordshire ST4 2DE t: +44 (0)1782 294000