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Journal of Applied Research and Technology

www.jart.ccadet.unam.mx

Journal of Applied Research and Technology 16 (2018) 126-139

K. Uma Maheswari a,*, S. Sathiyamoorthy b

Received dd mm aaaa; accepted dd mm aaaa Available online dd mm aaaa

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Intial Weight Weight: Iter 1 Weight: Iter 2 Weight: Iter 3 Weight: Iter 4 Intial Vignetting Vignetting: Iter 1 Vignetting: Iter 2 Vignetting: Iter 3 Vignetting: Iter 4

Given Image Corrected: Iter 1 Corrected: Iter 2 Corrected: Iter 3

Approximation A1

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Horizontal Detail H1

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Vertical Detail V1

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Diagonal Detail D1

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Approximation A2

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Referencias

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www.jart.ccadet.unam.mx Journal of Applied Research and Technology 16 2018 177-185 Muhammad Mansoor a,*, Ahnaf Usman Zilohu a, Muhammad Mujahid b, Shaheed Khan a Received dd mm