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The Optical Subsystem for the Empty Containers Recognition and Sorting in a Reverse Vending Machine

机译:逆向自动售货机中用于空容器识别和分类的光学子系统

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A reverse vending machine (RVM) is a machine where people can return empty beverage containers like plastic bottles and cans for recycling taking back a deposit or refund amount. Reverse vending machines are a key part of container deposit systems in Europe and the United States. Waste recognition and sorting in RVM machines can be performed by any of the following procedures: by determining the container material (e.g. using the IR-spectrometer), by recognition of the container type by its shape, or by the barcode identification. These three basic control-procedures make any attempt of the fraud completely impossible. But at the same time, it makes the RVM too expensive. With the modern computer vision technologies, we can design another kind of efficient and non-expensive RVM having the same functionality using energy-efficient IoT MCUs. In this paper, some approaches in computer vision and image processing and their application to the problem of automatic recognition of empty recyclable containers (bottles and cans) and detecting fraud were considered. The list of the available methods and frameworks was shortened because SoC and IoT controllers have memory and computational restrictions. The RVM's task is the classification of the image inside the RVM by three possible classes: PET bottle, aluminum can or fraud (everything that doesn't match PET bottle or can), even if cans or bottles are twisted or jammed. Finally, the performance of image recognition procedures in Python and C ++ languages was analyzed and some methods of efficient image processing and RVM structure enhancements to achieve competitive advantages were proposed.
机译:反向自动售货机(RVM)是人们可以将空的饮料容器(如塑料瓶和罐头)退还以回收押金或退款的机器。反向自动售货机是欧洲和美国集装箱存放系统的重要组成部分。 RVM机器中的废物识别和分类可以通过以下任何程序执行:确定容器材料(例如,使用红外光谱仪),通过容器的形状识别容器类型或通过条形码识别。这三个基本控制程序使欺诈行为的任何尝试都完全不可能。但是与此同时,它使RVM过于昂贵。借助现代计算机视觉技术,我们可以使用节能的IoT MCU设计另一种具有相同功能的高效且廉价的RVM。本文考虑了计算机视觉和图像处理中的一些方法及其在自动识别空的可回收容器(瓶和罐)和检测欺诈方面的应用。由于SoC和IoT控制器具有内存和计算限制,因此缩短了可用方法和框架的列表。 RVM的任务是按照三种可能的类别对RVM中的图像进行分类:PET瓶,铝罐或欺诈(与PET瓶或罐不匹配的所有东西),即使罐或瓶被扭曲或卡住。最后,分析了Python和C ++语言中图像识别程序的性能,并提出了一些有效的图像处理方法和RVM结构增强方法以获得竞争优势。

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