Waste object classification with AI on the edge accelerators

Michael Schneider, R. Amann, C. Mitsantisuk
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引用次数: 1

Abstract

The classification of waste with neural networks is already a topic in some scientific papers. An application in the embedded systems area with current AI processors to accelerate the inference has not yet been discussed. Therefore a prototype is created which classifies waste objects and automatically opens the appropriate container for the object. The area of application is in the public space. For the classification a dataset with 25.681 images and 11 classes was created to retrain the CNNs EfficentNet-B0, MobileNet-v2 and NASNet-Mobile. These CNNs run on the current Edge AI -accelerator processors from Google, Intel and Nvidia and are compared for performance, consumption and accuracy. The result of these comparisons and shows the advantages and disadvantages of the respective processors and the CNNs. For the prototype, the most suitable combination of hardware and AI architecture is used and exhibited at the university fair KasetFair2020.
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在边缘加速器上使用AI进行垃圾分类
利用神经网络对垃圾进行分类已经成为一些科学论文的主题。目前的人工智能处理器在嵌入式系统领域加速推理的应用尚未讨论。因此,创建了一个原型,它可以对废物进行分类,并自动打开相应的容器。应用的领域是在公共空间。在分类方面,建立了包含25.681张图像和11个类的数据集,对cnn的EfficentNet-B0、MobileNet-v2和NASNet-Mobile进行了再训练。这些cnn在谷歌、英特尔和英伟达目前的Edge人工智能加速器处理器上运行,并在性能、消耗和准确性方面进行了比较。这些比较的结果显示了各自处理器和cnn的优点和缺点。对于原型机,使用了最合适的硬件和人工智能架构组合,并在KasetFair2020大学博览会上展出。
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