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Fruit monitoring system using multi-layered neural network

机译:运用多层神经网络的水果监测系统

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A fruit monitoring system based on image processing technology and multi-layer neural network is proposed. The advantage of the proposed fruit monitoring system allows it to be remotely controlled by PCs and the graphical user interface (GUI) program by LabVIEW which has been designed for more intuitive and convenient operation of this system. In addition, the neural network can reduce nonlinearity of the system compared to the calculation based system. Therefore, experienced workers and novices can easily judge the ripeness of the fruits using the GUI program without necessarily going to the orchards. In this study, the color is used as a criterion to judge the maturity of tomatoes. Ripe tomatoes will appear to be red, while the unripe tomatoes will be green in color. The region of interest (ROI) function and Canny edge detection are applied to crop the image and remove the background, then the pixel data obtained are to supply the use of neural network. After that the maturity level of tomatoes is judged by the neural network. In laboratory test, 50 experiments have been down, 48 of which were successful, 2 of which failed, so the recognition rate was 96%. The experiments of this fruit monitoring system in the greenhouse on real growing tomatoes has been conducted. Therefore, 10 experiments on the red and green tomatoes has been conducted, respectively. As a result, the recognition rate of the red tomatoes is 100%, and recognition rate of the green tomatoes is 90%. The experimental results show that the proposed mobile fruit monitoring system has a very high recognition rate of accuracy.
机译:提出了一种基于图像处理技术和多层神经网络的水果监控系统。所建议的水果监控系统的优点是可以通过PC进行远程控制,并可以通过LabVIEW进行图形用户界面(GUI)程序的远程控制,而该程序的设计目的是使该系统更加直观,方便地操作。另外,与基于计算的系统相比,神经网络可以减少系统的非线性。因此,经验丰富的工人和新手可以使用GUI程序轻松判断水果的成熟程度,而不必去果园。在这项研究中,颜色用作判断西红柿成熟度的标准。成熟的西红柿看起来是红色的,而未成熟的西红柿则是绿色的。应用感兴趣区域(ROI)功能和Canny边缘检测来裁剪图像并去除背景,然后将获得的像素数据提供给神经网络使用。之后,通过神经网络判断西红柿的成熟度。在实验室测试中,有50个实验失败,其中48个成功,其中2个失败,因此识别率达到96%。已经在温室中对实际生长的番茄进行了这种水果监控系统的实验。因此,分别对红色和绿色番茄进行了10次实验。结果,红色西红柿的识别率为100%,绿色西红柿的识别率为90%。实验结果表明,提出的移动式水果监测系统具有很高的识别率。

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