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Colour classification of rubberwood boards for fingerjoint manufacturing using a SOM neural network and image processing

机译:使用SOM神经网络和图像处理的用于指接制造的橡胶木板的颜色分类

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摘要

In order to produce a high quality rubberwood fingerjoint with highly uniform colour, wood boards of naturally different shades and colours are required to be elaborately classified and grouped. Within each group, wood boards of comparable shade and colour are then cut and joined to form a highly uniform shade and colour fingerjoint of the required dimensions. Currently, many manufacturers in Thailand still rely heavily on a manual classification process by an expert. In this paper, an automatic approach based on a combination of an image processing technique and an artificial neural network is presented. The Kohonen self organizing map (SOM) is selected and used for training with modified histogram data from the hue colour component of the rubberwood boards' images. The outcome SOM is then used to classify an unknown colour rubberwood board with a novel colour group identification algorithm. The overall approach has proved effective in classifying the unknown colour of boards with as high as 95% accuracy without human intervention. In many cases, the approach provides invaluable information to guide an operator to easily classify the remaining 5%.
机译:为了生产具有高度均匀颜色的高质量橡胶木指接,需要对自然不同阴影和颜色的木板进行仔细的分类和分组。在每个组中,然后将具有相同阴影和颜色的木板切割并连接起来,以形成所需尺寸的高度均匀的阴影和颜色指接。当前,泰国的许多制造商仍然严重依赖专家的手动分类过程。本文提出了一种基于图像处理技术和人工神经网络相结合的自动方法。选择Kohonen自组织图(SOM),并将其用于从橡胶木板图像的色相颜色成分中修改的直方图数据进行训练。然后,将结果SOM用于通过新颖的颜色组识别算法对未知颜色的橡胶木板进行分类。事实证明,该总体方法可有效地以95%的准确度对木板的未知颜色进行分类,而无需人工干预。在许多情况下,该方法可提供宝贵的信息,以指导操作员轻松地将剩余的5%分类。

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