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Super-resolution mapping using Hopfield neural network with panchromatic imagery

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Super-resolution mapping using Hopfield neural network with panchromatic imagery. / Nguyen, Quang Minh; Atkinson, Peter M.; Lewis, Hugh G.
In: International Journal of Remote Sensing, Vol. 32, No. 21, 11.2011, p. 6149-6176.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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Nguyen, QM, Atkinson, PM & Lewis, HG 2011, 'Super-resolution mapping using Hopfield neural network with panchromatic imagery', International Journal of Remote Sensing, vol. 32, no. 21, pp. 6149-6176. https://doi.org/10.1080/01431161.2010.507797

APA

Nguyen, Q. M., Atkinson, P. M., & Lewis, H. G. (2011). Super-resolution mapping using Hopfield neural network with panchromatic imagery. International Journal of Remote Sensing, 32(21), 6149-6176. https://doi.org/10.1080/01431161.2010.507797

Vancouver

Nguyen QM, Atkinson PM, Lewis HG. Super-resolution mapping using Hopfield neural network with panchromatic imagery. International Journal of Remote Sensing. 2011 Nov;32(21):6149-6176. Epub 2011 Jul 12. doi: 10.1080/01431161.2010.507797

Author

Nguyen, Quang Minh ; Atkinson, Peter M. ; Lewis, Hugh G. / Super-resolution mapping using Hopfield neural network with panchromatic imagery. In: International Journal of Remote Sensing. 2011 ; Vol. 32, No. 21. pp. 6149-6176.

Bibtex

@article{cb965f2b081640249daf03b1cdfebf01,
title = "Super-resolution mapping using Hopfield neural network with panchromatic imagery",
abstract = "Land-cover proportions of mixed pixels can be predicted using soft classification. From the land-cover proportions, a hard land-cover map can be predicted at sub-pixel spatial resolution using super-resolution mapping techniques. It has been demonstrated that the Hopfield Neural Network (HNN) provides a suitable method for super-resolution mapping. To increase the detail and accuracy of the sub-pixel land-cover map, supplementary information at an intermediate spatial resolution can be used. In this research, panchromatic (PAN) imagery was used as an additional source of information for super-resolution mapping. Information from the PAN image was captured by a new PAN reflectance constraint in the energy function of the HNN. The value of the new PAN reflectance constraint was defined based on forward and inverse models with local end-member spectra and local convolution weighting factors. Two sets of simulated and degraded data were used to test the new technique. The results indicate that PAN imagery can be used as a source of supplementary information to increase the detail and accuracy of sub-pixel land-cover maps produced by super-resolution mapping from land-cover proportion images.",
author = "Nguyen, {Quang Minh} and Atkinson, {Peter M.} and Lewis, {Hugh G.}",
note = "M1 - 21",
year = "2011",
month = nov,
doi = "10.1080/01431161.2010.507797",
language = "English",
volume = "32",
pages = "6149--6176",
journal = "International Journal of Remote Sensing",
issn = "0143-1161",
publisher = "TAYLOR & FRANCIS LTD",
number = "21",

}

RIS

TY - JOUR

T1 - Super-resolution mapping using Hopfield neural network with panchromatic imagery

AU - Nguyen, Quang Minh

AU - Atkinson, Peter M.

AU - Lewis, Hugh G.

N1 - M1 - 21

PY - 2011/11

Y1 - 2011/11

N2 - Land-cover proportions of mixed pixels can be predicted using soft classification. From the land-cover proportions, a hard land-cover map can be predicted at sub-pixel spatial resolution using super-resolution mapping techniques. It has been demonstrated that the Hopfield Neural Network (HNN) provides a suitable method for super-resolution mapping. To increase the detail and accuracy of the sub-pixel land-cover map, supplementary information at an intermediate spatial resolution can be used. In this research, panchromatic (PAN) imagery was used as an additional source of information for super-resolution mapping. Information from the PAN image was captured by a new PAN reflectance constraint in the energy function of the HNN. The value of the new PAN reflectance constraint was defined based on forward and inverse models with local end-member spectra and local convolution weighting factors. Two sets of simulated and degraded data were used to test the new technique. The results indicate that PAN imagery can be used as a source of supplementary information to increase the detail and accuracy of sub-pixel land-cover maps produced by super-resolution mapping from land-cover proportion images.

AB - Land-cover proportions of mixed pixels can be predicted using soft classification. From the land-cover proportions, a hard land-cover map can be predicted at sub-pixel spatial resolution using super-resolution mapping techniques. It has been demonstrated that the Hopfield Neural Network (HNN) provides a suitable method for super-resolution mapping. To increase the detail and accuracy of the sub-pixel land-cover map, supplementary information at an intermediate spatial resolution can be used. In this research, panchromatic (PAN) imagery was used as an additional source of information for super-resolution mapping. Information from the PAN image was captured by a new PAN reflectance constraint in the energy function of the HNN. The value of the new PAN reflectance constraint was defined based on forward and inverse models with local end-member spectra and local convolution weighting factors. Two sets of simulated and degraded data were used to test the new technique. The results indicate that PAN imagery can be used as a source of supplementary information to increase the detail and accuracy of sub-pixel land-cover maps produced by super-resolution mapping from land-cover proportion images.

U2 - 10.1080/01431161.2010.507797

DO - 10.1080/01431161.2010.507797

M3 - Journal article

VL - 32

SP - 6149

EP - 6176

JO - International Journal of Remote Sensing

JF - International Journal of Remote Sensing

SN - 0143-1161

IS - 21

ER -