Image-Based Tomato Maturity Classification and Detection Using Faster R-CNN Method

S. Widiyanto, D. T. Wardani, Singgih Wisnu Pranata
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引用次数: 2

Abstract

Tomato is one of the cultivations that is often used for gardening. Tomato also has high demands on the market as it’s used for daily needs and occurred for many cuisines. Tomato comes in several colors such as red, orange, and green. Their color could tell their maturity levels too. Tomato grows in several quantities even only on one branch. So as the technologies grow, the computer also could be trained to understand what tomato is and how does it look like. Using computer vision, the computer could tell tomatoes according to their color. For this study, the computer will be trained using Faster R-CNN models to recognize the tomato maturity as Faster R-CNN known support for the image classification and object detection. The accuracy for classification in validation stage about 98,70% in average. For the object detection the model has confidentiality about 96,20% to detect the tomato maturity.
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基于图像的快速R-CNN番茄成熟度分类与检测
番茄是一种经常用于园艺的栽培作物。西红柿在市场上也有很高的需求,因为它被用于日常需求,并且出现在许多菜肴中。西红柿有几种颜色,如红色、橙色和绿色。它们的颜色也可以表明它们的成熟程度。即使在一根树枝上,番茄也能长出好几个量。因此,随着技术的发展,计算机也可以被训练来理解番茄是什么以及它的样子。利用计算机视觉,计算机可以根据西红柿的颜色来识别它们。在本研究中,计算机将使用Faster R-CNN模型进行训练,以识别西红柿成熟度,作为已知的更快R-CNN对图像分类和目标检测的支持。验证阶段的分类准确率平均约为98.70%。对于目标检测,该模型对番茄成熟度的保密性约为96.20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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