Improved Color Mapping Methods for Multiband Nighttime Image Fusion

Previously, we presented two color mapping methods for the application of daytime colors to fused nighttime (e.g., intensified and longwave infrared or thermal (LWIR)) imagery. These mappings not only impart a natural daylight color appearance to multiband nighttime images but also enhance their con...

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Main Authors: Maarten A. Hogervorst, Alexander Toet
Format: Article
Language:English
Published: MDPI AG 2017-08-01
Series:Journal of Imaging
Subjects:
Online Access:https://www.mdpi.com/2313-433X/3/3/36
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spelling doaj-d547ba2e7f59444cb59881b2bed9fc992020-11-24T20:48:26ZengMDPI AGJournal of Imaging2313-433X2017-08-01333610.3390/jimaging3030036jimaging3030036Improved Color Mapping Methods for Multiband Nighttime Image FusionMaarten A. Hogervorst0Alexander Toet1TNO, Perceptual and Cognitive Systems, Kampweg 5, 3769DE Soesterberg, The NetherlandsTNO, Perceptual and Cognitive Systems, Kampweg 5, 3769DE Soesterberg, The NetherlandsPreviously, we presented two color mapping methods for the application of daytime colors to fused nighttime (e.g., intensified and longwave infrared or thermal (LWIR)) imagery. These mappings not only impart a natural daylight color appearance to multiband nighttime images but also enhance their contrast and the visibility of otherwise obscured details. As a result, it has been shown that these colorizing methods lead to an increased ease of interpretation, better discrimination and identification of materials, faster reaction times and ultimately improved situational awareness. A crucial step in the proposed coloring process is the choice of a suitable color mapping scheme. When both daytime color images and multiband sensor images of the same scene are available, the color mapping can be derived from matching image samples (i.e., by relating color values to sensor output signal intensities in a sample-based approach). When no exact matching reference images are available, the color transformation can be derived from the first-order statistical properties of the reference image and the multiband sensor image. In the current study, we investigated new color fusion schemes that combine the advantages of both methods (i.e., the efficiency and color constancy of the sample-based method with the ability of the statistical method to use the image of a different but somewhat similar scene as a reference image), using the correspondence between multiband sensor values and daytime colors (sample-based method) in a smooth transformation (statistical method). We designed and evaluated three new fusion schemes that focus on (i) a closer match with the daytime luminances; (ii) an improved saliency of hot targets; and (iii) an improved discriminability of materials. We performed both qualitative and quantitative analyses to assess the weak and strong points of all methods.https://www.mdpi.com/2313-433X/3/3/36sensor fusionvisualizationnight visionimage intensifierthermal sensorcolor mapping
collection DOAJ
language English
format Article
sources DOAJ
author Maarten A. Hogervorst
Alexander Toet
spellingShingle Maarten A. Hogervorst
Alexander Toet
Improved Color Mapping Methods for Multiband Nighttime Image Fusion
Journal of Imaging
sensor fusion
visualization
night vision
image intensifier
thermal sensor
color mapping
author_facet Maarten A. Hogervorst
Alexander Toet
author_sort Maarten A. Hogervorst
title Improved Color Mapping Methods for Multiband Nighttime Image Fusion
title_short Improved Color Mapping Methods for Multiband Nighttime Image Fusion
title_full Improved Color Mapping Methods for Multiband Nighttime Image Fusion
title_fullStr Improved Color Mapping Methods for Multiband Nighttime Image Fusion
title_full_unstemmed Improved Color Mapping Methods for Multiband Nighttime Image Fusion
title_sort improved color mapping methods for multiband nighttime image fusion
publisher MDPI AG
series Journal of Imaging
issn 2313-433X
publishDate 2017-08-01
description Previously, we presented two color mapping methods for the application of daytime colors to fused nighttime (e.g., intensified and longwave infrared or thermal (LWIR)) imagery. These mappings not only impart a natural daylight color appearance to multiband nighttime images but also enhance their contrast and the visibility of otherwise obscured details. As a result, it has been shown that these colorizing methods lead to an increased ease of interpretation, better discrimination and identification of materials, faster reaction times and ultimately improved situational awareness. A crucial step in the proposed coloring process is the choice of a suitable color mapping scheme. When both daytime color images and multiband sensor images of the same scene are available, the color mapping can be derived from matching image samples (i.e., by relating color values to sensor output signal intensities in a sample-based approach). When no exact matching reference images are available, the color transformation can be derived from the first-order statistical properties of the reference image and the multiband sensor image. In the current study, we investigated new color fusion schemes that combine the advantages of both methods (i.e., the efficiency and color constancy of the sample-based method with the ability of the statistical method to use the image of a different but somewhat similar scene as a reference image), using the correspondence between multiband sensor values and daytime colors (sample-based method) in a smooth transformation (statistical method). We designed and evaluated three new fusion schemes that focus on (i) a closer match with the daytime luminances; (ii) an improved saliency of hot targets; and (iii) an improved discriminability of materials. We performed both qualitative and quantitative analyses to assess the weak and strong points of all methods.
topic sensor fusion
visualization
night vision
image intensifier
thermal sensor
color mapping
url https://www.mdpi.com/2313-433X/3/3/36
work_keys_str_mv AT maartenahogervorst improvedcolormappingmethodsformultibandnighttimeimagefusion
AT alexandertoet improvedcolormappingmethodsformultibandnighttimeimagefusion
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