Determination of Shelled Corn Damages using Colored Image Edge Detection with Convolutional Neural Network

A. Yumang, G. Magwili, Sev Kyle C. Montoya, Corleone Jorel G. Zaldarriaga
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引用次数: 18

Abstract

In the Philippines corn is one of the top agricultural products produced in the country, specifically yellow corn. It is distributed in various cities and provinces to consumers. It is important that the corn kernels to undergo quality assurance before releasing them to the consumers. The methods for evaluating and qualifying corn kernels that are employed by most farms in the country are only done by manual human inspection and these methods are inconsistent which results to inaccurate findings. This is more prevalent when dealing with large amounts of kernels that need to be qualified. This study offers to reduce those inconsistencies by implementing a neural network-assisted method of inspection. The damages to corn kernels can be determined by its physical attributes and as such, the neural network will easily detect the type of damage within a given sample. Aside from the healthy kernels, the types of damage that was included in this study are the following: drier damage, heat damage, heat damage (drier phase), OCOL (Other Color) Type A and OCOL Type B. The neural network that will be used will be a Convolutional Neural Network wherein the images of the samples are subjected to layers of processing. This study also uses Colored Image Edge Detection. The detection method used in this study has obtained an accuracy rating of 96.66%.
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基于卷积神经网络的彩色图像边缘检测检测脱壳玉米损伤
在菲律宾,玉米是该国最重要的农产品之一,尤其是黄玉米。在全国各省市分发给消费者。在出售给消费者之前,玉米粒要经过质量保证,这一点很重要。该国大多数农场采用的评估和鉴定玉米粒的方法仅通过人工检查完成,这些方法不一致,导致结果不准确。这在处理大量需要被限定的内核时更为普遍。本研究提供了通过实施神经网络辅助检查方法来减少这些不一致。玉米籽粒的损伤程度可以通过籽粒的物理属性来确定,因此,神经网络可以很容易地检测出给定样本内的损伤类型。除了健康的核外,本研究中包括的损伤类型如下:干燥损伤、热损伤、热损伤(干燥阶段)、OCOL(其他颜色)A型和OCOL b型。将使用的神经网络将是卷积神经网络,其中样品的图像将经过层层处理。本研究还采用了彩色图像边缘检测。本研究采用的检测方法,准确率达到96.66%。
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