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      Simultaneous Wood Defect and Species Detection with 3D Laser Scanning Scheme

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      International Journal of Optics
      Hindawi Limited

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          Abstract

          Wood grading and wood price are mainly connected with the wood defect and wood species. In this paper, a wood defect quantitative detection scheme and a wood species qualitative identification scheme are proposed simultaneously based on 3D laser scanning point cloud. First, an Artec 3D scanner is used to scan the wood surface to get the 3D point cloud. Each 3D point contains its X , Y , and Z coordinate and its RGB color information. After preprocessing, the Z coordinate value of current point is compared with the set threshold to judge whether it is a defect point (i.e., cavity, worm tunnel, and crack). Second, a deep preferred search algorithm is used to segment the retained defect points marked with different colors. The integration algorithm is used to calculate the surface area and volume of every defect. Finally, wood species identification is performed with the wood surface’s color information. The color moments of scanned points are used for classification, but the defect points are not used. Experiments indicate that our scheme can accurately measure the surface areas and volumes of cavity, worm tunnel, and crack on wood surface with measurement error less than 5% and it can also reach a wood species recognition accuracy of 95%.

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          INFRARED SPECTROSCOPIC STUDIES OF SOLID WOOD

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            Raman Spectroscopy and Genetic Algorithms for the Classification of Wood Types

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              Near-infrared spectroscopic study of the physical and mechanical properties of wood with meso- and micro-scale anatomical observation.

              Estimation of the density along with the tensile strength of wood within both the elastic and plastic deformation ranges, represented as modulus of elasticity (MOE) and ultimate tensile stress (UTS), respectively, were performed using near-infrared (NIR) spectroscopy. A partial least squares (PLS) analysis was applied to the measurements of density, MOE, and UTS, and resulted in a high accuracy of prediction, independent of wood species. The correlation coefficient between the NIR spectra and criterion variables, and the regression vector resulting from the PLS analysis, suggested that the characteristic absorption bands were strongly related to the predictability of each property. In the case of softwood, absorption bands due to intra-molecular hydrogen-bonded OH groups in the crystalline regions of cellulose, which are oriented preferentially in a direction parallel to the cellulose chain, might strongly affect the tensile strength of softwood. Hardwoods have much more complex and variable structures than softwoods; therefore, it was supposed that the key factor governing the tensile strength in hardwood would be the interaction between the three principal constituents (i. e., cellulose, hemicellulose, and lignin) of wood.
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                Author and article information

                Journal
                International Journal of Optics
                International Journal of Optics
                Hindawi Limited
                1687-9384
                1687-9392
                2016
                2016
                : 2016
                :
                : 1-6
                Article
                10.1155/2016/7049523
                724c9e23-05d3-4ae4-ada5-52192d952106
                © 2016

                http://creativecommons.org/licenses/by/4.0/

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