反向自动售货机空容器识别系统中图像清晰度估计及CNN训练增强

A. Kokoulin, Aleksandr I. Knyazev
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引用次数: 4

摘要

自动售货机“Sortomat”接受塑料瓶进一步回收。通过运行神经网络脚本对接收到的容器进行分析。计算由树莓派完成,树莓派的计算能力较小,神经网络处理图像耗时较长。本文讨论了两个验证运行神经网络脚本的必要性的程序。第一个功能可以让我们知道相机是否通电,照片是否对焦,是否清晰。第二个函数报告RVM中是否有适合识别的对象。该方法通过估计神经网络运行的必要性和避免图像的模糊和错误处理,减少了总运行时间。本文讨论的第二个问题是提高目标识别精度的图像数据源增强方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Image Sharpness Estimation and the CNN Training Enhancement in the Empty Containers Recognition System of Reverse Vending Machine
The automatic reverse vending machine (RVM) “Sortomat” accepts plastic bottles for further recycling. The analysis of the received containers is performed by running the neural network script. Computations are performed by the Raspberry Pi whose computing power is small and image processing by neural networks takes a lot of time. This paper discusses two procedures that verify the necessity to run a neural network script. The first function allows us to find out whether the camera is powered on and whether pictures are taken in focus and are sharp. The second function reports whether there is an object inside the RVM which is suitable for recognition. This approach helps to decrease the total operating time by estimating the necessity of neural network running and by avoiding the blurred and faulty image processing. The second problem discussed in this article is the image data source augmentation methods for object recognition accuracy enhancement.
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