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Colour-Based Binary Discrimination of Scarified Quercus robur Acorns under Varying Illumination

机译:变光照下稀疏栎类橡子的基于颜色的二进制区分

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Efforts to predict the germination ability of acorns using their shape, length, diameter and density are reported in the literature. These methods, however, are not efficient enough. As such, a visual assessment of the viability of seeds based on the appearance of cross-sections of seeds following their scarification is used. This procedure is more robust but demands significant effort from experienced employees over a short period of time. In this article an automated method of acorn scarification and assessment has been announced. This type of automation requires the specific setup of a machine vision system and application of image processing algorithms for evaluation of sections of seeds in order to predict their viability. In the stage of the analysis of pathological changes, it is important to point out image features that enable efficient classification of seeds in respect of viability. The article shows the results of the binary separation of seeds into two fractions (healthy or spoiled) using average components of regular red-green-blue and perception-based hue-saturation-value colour space. Analysis of accuracy of discrimination was performed on sections of 400 scarified acorns acquired using two various setups: machine vision camera under uncontrolled varying illumination and commodity high-resolution camera under controlled illumination. The accuracy of automatic classification has been compared with predictions completed by experienced professionals. It has been shown that both automatic and manual methods reach an accuracy level of 84%, assuming that the images of the sections are properly normalised. The achieved recognition ratio was higher when referenced to predictions provided by professionals. Results of discrimination by means of Bayes classifier have been also presented as a reference.
机译:文献报道了使用橡子的形状,长度,直径和密度来预测橡子的发芽能力的努力。但是,这些方法不够有效。因此,使用了基于种子划痕后种子横截面外观的种子生存力的视觉评估。此过程更可靠,但需要经验丰富的员工在短时间内付出大量努力。在本文中,已经宣布了一种自动进行橡子果皮疏松和评估的方法。这种类型的自动化需要特定的机器视觉系统设置和图像处理算法的应用,以评估种子的各个部分,从而预测其生存能力。在病理变化的分析阶段,重要的是指出能够对种子进行有效分类的图像特征。本文显示了使用常规红绿蓝和基于感知的色相饱和度值色彩空间的平均分量将种子二元分离为两个部分(健康或变质)的结果。辨别准确性的分析是对使用两种不同设置获取的400颗稀有橡子的切片进行的:在不受控制的可变照明条件下的机器视觉相机和在受控制的照明条件下的商品高分辨率相机。自动分类的准确性已与经验丰富的专业人员完成的预测进行了比较。结果表明,假设这些部分的图像已正确归一化,自动和手动方法的准确度均达到84%。当参考专业人士的预测时,获得的识别率更高。通过贝叶斯分类器的鉴别结果也已经作为参考。

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