Texture organisation and mapping on Citrus sinensis point cloud.

Yang, H.S., Chang, J., Geng, N., Notman, G., Li, S., Jiang, M., Wang, M.L. and Zhang, J. J., 2017. Texture organisation and mapping on Citrus sinensis point cloud. Multimedia Tools and Applications, 76 (13), 14711- 14732.

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DOI: 10.1007/s11042-016-3998-6

Abstract

In light of the current problems including coarseness, visible cracks, difficult data organisation, and the expensive memory requirements of the current texture methods, this paper mainly focuses on efficient organisation, linearised memory compression and seamless texture mapping between scanned Citrus sinensis images and point cloud information. Position and colour gradient based top-down splitting is proposed to simplify and organise the texture as texel descriptors to avoid both over-simplification and under-simplification. A Quadtree Morton and Z-order based linearised coding strategy is presented to compress the memory space of our texel descriptor based texture. A Gaussian Markov random field scheme was designed to smooth the ‘cracks’ between neighbouring texels. The simulated results on eight Citrus sinensises show that our simplification method reduces the texture memory requirements by 81.3 % over the original image, and 50 % over conventional simplification. The compression scheme also showed a 61.7 % improvement over the ordinary Morton code. Finally, the Gaussian Markov random field scheme makes the texture mapping smoother in comparison with other methods.

Item Type:Article
ISSN:1380-7501
Uncontrolled Keywords:Citrus sinensis; Texel descriptor; Linearisation code; Texture mapping
Group:Faculty of Science & Technology
ID Code:25183
Deposited By: Unnamed user with email symplectic@symplectic
Deposited On:07 Dec 2016 10:21
Last Modified:14 Jun 2017 14:40

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