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Real-time classification of polymers with NIR spectral imaging and blob analysis

机译:利用NIR光谱成像和斑点分析对聚合物进行实时分类

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Near-infrared (NIR) spectroscopy is widely used in laboratory and industrial applications for material classification. While standard spectrometers only allow measurement at one sampling point at a time, NIR Spectral Imaging techniques can identify, in real-time, both the size and shape of an object as well as the material it is made from. The robust classification of materials, such as polymers, is based on their characteristic reflectance spectra. As a sample application, we present the real-time classification of waste polymers in a prototype of an automated industrial sorting facility. Sorting requires the correct material, size and shape of the entire object to be known for reliable separation. In this paper, a method for paper label detection on polymer parts is introduced, aimed at enhancing the classification results by merging connected parts of an object.
机译:近红外(NIR)光谱广泛用于实验室和工业应用中的材料分类。标准光谱仪一次只能进行一个采样点的测量,而NIR光谱成像技术可以实时识别物体的大小和形状以及其制成的材料。诸如聚合物之类的材料的可靠分类基于其特征反射光谱。作为一个示例应用程序,我们在自动化工业分类设备的原型中提供了对废聚合物的实时分类。分类需要正确知道整个对象的正确材料,大小和形状,以进行可靠的分离。本文介绍了一种在聚合物零件上进行纸标签检测的方法,旨在通过合并对象的连接零件来增强分类结果。

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