...
首页> 外文期刊>Food analytical methods >Automatic Detection and Grading of Multiple Fruits by Machine Learning
【24h】

Automatic Detection and Grading of Multiple Fruits by Machine Learning

机译:通过机器学习自动检测和分级多个水果

获取原文
获取原文并翻译 | 示例
           

摘要

Classification of various types of fruits and identification of the grading of fruit is a burdensome challenge due to the mass production of fruit products. In order to distinguish and evaluate the quality of fruits more precisely, this paper presents a system that discriminates among four types of fruits and analyzes the rank of the fruit-based on its quality. Firstly, the algorithm extracts the red, green, and blue values of the images and then the background of images was detached by the split-and-merge algorithm. Next, the multiple features (30 features) namely color, statistical, textural, and geometrical features are extracted. To differentiate between the fruit type, only geometrical features (12 features), other features are used in the quality evaluation of fruit. Furthermore, four different classifiers k-nearest neighbor (k-NN), support vector machine (SVM), sparse representative classifier (SRC), and artificial neural network (ANN) are used to classify the quality. The classifier has been contemplated with four different databases of fruits: one having 4359 color images of apples; out of which 2342, are with various defects, second having 918 color images of avocado out of which 491 are of with various defects, third having 3805 color images of banana out of which 2224 are with various defects, and fourth having 3050 color images of oranges out of which 1590 are with various defects. The system performance has been validated using the k-fold cross-validation technique by considering different values of k. The maximum accuracy achieved for fruit detection is 80.00% (k-NN), 85.51% (SRC), 91.03% (ANN), and 98.48% (SVM) for k = 10.The classification among Rank1, Rank2, and defected maximum accuracy is 77.24% (k-NN), 82.75% (SRC), 88.27% (ANN), and 95.72% (SVM) achieved by the system. SVM has seen to be more effective in quality evaluation and results obtained are encouraging and comparable with the state of art techniques.
机译:各种类型的果实分类和鉴定果实的鉴定是由于果实产物的批量生产,果实的鉴定是一种繁重的挑战。为了更精确地区分和评价水果的质量,本文提出了一种体系,其在四种水果中辨别并分析了基于其质量的水果的等级。首先,该算法提取图像的红色,绿色和蓝色值,然后通过分离和合并算法分离图像背景。接下来,提取多个特征(30个功能)即颜色,统计,纹理和几何特征。为了区分水果类型,只有几何特征(12个功能),其他功能用于水果的质量评估。此外,使用四个不同的分类器K-最近邻(K-NN),支持向量机(SVM),稀疏代表分类器(SRC)和人工神经网络(ANN)来分类质量。分类器已经预期有四个不同的果实数据库:一个具有4359个苹果彩色图像;从其中2342具有各种缺陷,第二个具有918个彩色图像的鳄梨,其中491具有各种缺陷,第三个具有3805个香蕉的彩色图像,其中2224具有各种缺陷,第四个具有3050个彩色图像孤立在其中1590的缺陷有各种缺陷。通过考虑k的不同值,使用k折叠交叉验证技术验证了系统性能。用于果实检测的最大精度为80.00%(K-NN),85.51%(S​​RC),91.03%(ANN)和98.48%(SVM),k = 10. rank1,RANK2和最大准确度的分类是77.24%(K-NN),82.75%(SRC),88.27%(ANN)和95.72%(SVM)通过该系统实现。 SVM已在质量评估中看到更有效,并且获得的结果是令人鼓舞和与艺术技术的态度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号