水果成熟阶段和蔬菜成熟阶段的实时监测与感染检测

K. Jaspin, S. Selvan, J. Rose, Jeswin Ebenezer, A. Chockalingam
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引用次数: 2

摘要

每一种水果和蔬菜,都有不同的成熟阶段和成熟阶段。例如,根据美国温室番茄的标准,番茄的成熟有六个阶段。但有用的阶段只有最后两个。采收方法和施肥监督不当,导致果蔬采后寿命缩短。监测成熟阶段和成熟阶段需要对水果和蔬菜的颜色和大小有适当的了解。为了减少过多的劳动费用和水果、蔬菜的浪费,可以引进自主种植方式。在自主农业中,主要目标是检测蔬菜或水果是否成熟,是否感染。如果这个目标实现了,那么农民就可以很容易地收获水果并清除受感染的水果。受感染的水果需要去除,这样它就不会传染给其他人。适当的肥料可以给水果。例如,如果芒果感染了缺乏症,那么适当的维生素肥可以给予水果。因此,利用高效的HSL色彩空间算法和OpenCV库在python中进行图像处理,制作了一个实时监测系统,用于识别蔬菜或水果的成熟和成熟阶段,并检查水果是否感染。通过对现有各种果蔬检测系统的比较,发现一些果蔬检测阶段的可用性非常有限,特别是在实时图像处理方面。通过使用图像有很多缺点,我们需要拍摄大量的照片,照明,并且在实时农业中它是乏味的。因此,本系统采用python语言中的Open CV库实现图像的实时检测处理。在现有的系统中使用RGB色彩空间。本文提出了一种基于HSL色彩空间的果蔬成熟阶段识别算法。提出的系统还包括使用上述方法检测水果或蔬菜中的疾病。这是通过在算法中设置特定的颜色范围、亮度和饱和度范围以及形状和大小的度量来完成的。通过对这些指标的有效设置,找到了一种有效的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Surveillance for Identification of Fruits Ripening Stages and Vegetables Maturation Stages with Infection Detection
For every fruit and vegetable, there are various ripening stages and maturation stages. For example, according to US standards for greenhouse tomatoes, there are six stages in tomato ripening. But the useful stages are only last two. Improper supervision in harvest methods and fertilization leads to the decrease in the post-harvest life of fruit and vegetables. Monitoring the ripening stages and maturation stages require proper knowledge of color and size of fruits and vegetables. In order to decrease excessive labor charges and wastages of fruits and vegetables, autonomous farming methods can be introduced. In autonomous farming, the main objective is to detect a vegetable or a fruit is ripe or not and it’s infected or not. If this objective is achieved then farmers can easily harvest fruits and remove the infected fruits too. The infected fruits need to be removed so that it doesn’t infect others. And proper fertilizers can be given to there to fruits. For example, if mango is infected by a deficiency disease then proper vitamin fertilizer can be given to the fruit. So by using image processing in python using an efficient HSL color space algorithm and OpenCV library,a real time monitoring system is made to identify the maturation and ripening stages of a vegetable or fruit and to check whether a fruit is infected or not. Based on the comparison of existing systems for various fruits and vegetables, there is a very scarce availability for some fruits and vegetables detection of stages, which specifically in real time image processing. By using images there are lot of disadvantages where we need to take a lot of pictures, the lighting, and in real time in farming it is tedious. So live detection of image processing is done in the proposed system using Open CV library in python. In existing system RGB color spaces are used. Here an efficient algorithm using HSL color space is used to identify a fruit vegetable ripening and maturation stages. The proposed system also includes the detection of diseases in fruit or vegetable using the above method. This is done by setting the specific color ranges, brightness and saturation ranges in algorithm and metrics for shapes and size too. By an efficient setting of these metrics an efficient algorithm is found out.
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