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Classification of Cane Sugar Based on Physical Characteristics Using SVM

机译:基于支持向量机的物理特性对甘蔗糖的分类

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The document presented is all about classification of commercially available cane sugars. A variety of image processing algorithms are implemented. In this study, the researchers identified ten different classes of sugars and trained the system to the physical characteristics of each sugar. The main objective of this study is to classify cane sugar based on physical characteristics using SVM. Specifically, (1) to create a hardware that will categorize sugar based from color and size, (2) to implement different image processing technique using MATLAB, (3) to test and verify different crystalized white and brown sugar if the system is classifying correctly. The sugar will be classified into ten different kinds which include granulated sugar, caster sugar, cane sugar, sanding sugar, demerara sugar, turbinado sugar, muscovado sugar, light brown sugar, pearl sugar, and confectioners’ sugar. The physical characteristics are known to be the color in RGB value and size in pixels. Darkfield Illumination will be implemented in to enhance and image captured by the camera. The training consists of 30 distinct sets of values for every sugar. This ensures that the project created will be able to successfully classify sugars. As a result, the device has a total accuracy of 86.97%.
机译:所提供的文件全部涉及市售蔗糖的分类。实现了多种图像处理算法。在这项研究中,研究人员确定了十种不同类型的糖,并针对每种糖的物理特性对系统进行了培训。这项研究的主要目的是使用SVM根据物理特性对蔗糖进行分类。具体来说,(1)创建一个可以根据颜色和大小对糖进行分类的硬件,(2)使用MATLAB实施不同的图像处理技术,(3)如果系统正确分类,则可以测试和验证不同的结晶白糖和红糖。糖将分为十种,包括砂糖,细砂糖,蔗糖,砂糖,德梅拉拉糖,turbinado糖,muscovado糖,浅棕糖,珍珠糖和糖果糖。已知物理特性是RGB值中的颜色和像素中的大小。将实施“暗场照明”以增强相机拍摄的图像。培训包含每种糖30种不同的值。这确保了创建的项目将能够成功地对糖进行分类。结果,该设备的总精度为86.97%。

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