改进稻米品质分析过程的机器视觉技术

G. Karunasena, H. Priyankara, B. G. D. A. Madushanka
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引用次数: 1

摘要

稻米品质检验是稻米生产的重要环节。为了提供高质量和准确的稻米分析结果,对样品中的稻米进行逐一分析是非常重要的。在目前的情况下,大多数米粒生产商都是手工检测米粒,没有使用任何自动化过程。主要的问题是测试结果的准确性取决于人的质量,因为人工处理包括人为错误。由于这些原因,米粒的人工检验是一个非常复杂和耗时的过程,大多数检验员的影响都受到外界因素的影响,如疲劳、紧张等。在本研究中,我们通过开发软件提供了一种省时、低成本的解决方案来减少上述限制。它采用现代图像处理技术,比人工检测更有效地对米粒进行逐一分析。大米样品的质量可以通过颜色和几何特征(如面积、最大长度、最大宽度和长宽比)来确定。本分析系统采用Java编程语言设计和开发了测量面积、最大长度、最大宽度和长宽比的分析系统,并采用计算机视觉中的形态学和色彩运算,最后通过人工测试样品和系统测试结果的对比测试了系统的准确性。结果表明,该系统提供了超过85%的准确率,并确认这是一个更好的解决方案
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Vision Techniques for Improve Rice Grain Quality Analyzing Process
Rice grain quality inspection is a major process in rice production. To provide quality and accurate results in rice grain analyzing it is important to analyze rice grains one by one in a testing sample. In the current situation, most of rice grain producers inspect rice grains manually without using any automated process. The major problem is the accuracy of testing results depends on human quality because manually processes include human errors. The manual inspection of rice grains is a very complicated and time-consuming process due to these reasons most of the inspector's effect by external factors such as fatigue, tension etc. In this research, we provide a time-efficient and low-cost solution for reducing above-mentioned limitations by developing software. It uses modern image processing to analyze rice grains one by one efficiently over the manual examination. The quality of rice samples can be determined with the help of colour, and geometric features such as area, maximum length, maximum width and aspect ratio. This analyzing system designed and developed for measure area, maximum length, maximum width and aspect ratio by using Java programming language, morphological and colour operations in computer vision and finally the accuracy of the system tested by comparing manually tested sample and results from the system. According to the results, it shows this system provides more than 85 percent accuracy with confirming this was a better solution
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