Deep computer vision system for cocoa classification

被引:0
作者
Jessica Fernandes Lopes
Victor G. Turrisi da Costa
Douglas F. Barbin
Luis Jam Pier Cruz-Tirado
Vincent Baeten
Sylvio Barbon Junior
机构
[1] Londrina State University (UEL),Department of Electrical Engineering
[2] Londrina State University (UEL),Department of Computer Science
[3] University of Campinas (UNICAMP),Department of Food Engineering
[4] Walloon Agricultural Research Center (CRA-W),undefined
[5] Università degli Studi di Trieste,undefined
[6] University of Trieste Dipartimento di Ingegneria e Architettura (DIA),undefined
来源
Multimedia Tools and Applications | 2022年 / 81卷
关键词
Machine learning; Deep learning; Computer vision; Food quality;
D O I
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中图分类号
学科分类号
摘要
Cocoa hybridisation generates new varieties which are resistant to several plant diseases, but has individual chemical characteristics that affect chocolate production. Image analysis is a useful method for visual discrimination of cocoa beans, while deep learning (DL) has emerged as the de facto technique for image processing . However, these algorithms require a large amount of data and careful tuning of hyperparameters. Since it is necessary to acquire a large number of images to encompass the wide range of agricultural products, in this paper, we compare a Deep Computer Vision System (DCVS) and a traditional Computer Vision System (CVS) to classify cocoa beans into different varieties. For DCVS, we used a Resnet18 and Resnet50 as backbone, while for CVS, we experimented traditional machine learning algorithms, Support Vector Machine (SVM), and Random Forest (RF). All the algorithms were selected since they provide good classification performance and their potential application for food classification A dataset with 1,239 samples was used to evaluate both systems. The best accuracy was 96.82% for DCVS (ResNet 18), compared to 85.71% obtained by the CVS using SVM. The essential handcrafted features were reported and discussed regarding their influence on cocoa bean classification. Class Activation Maps was applied to DCVS’s predictions, providing a meaningful visualisation of the most important regions of the images in the model.
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页码:41059 / 41077
页数:18
相关论文
共 129 条
[1]  
Aguiar GJ(2019)A meta-learning approach for selecting image segmentation algorithm Pattern Recogn Lett 128 480-487
[2]  
Mantovani RG(2011)Recognition of weed seed species by image processing J Food Agric Environ 9 379-383
[3]  
Mastelini SM(2001)Random forests Machine learning 45 5-32
[4]  
de Carvalho AC(1986)A computational approach to edge detection IEEE Trans Pattern Anal Mach Intell 8 679-698
[5]  
Campos GF(2020)Computer vision based detection of external defects on tomatoes using deep learning Biosyst Eng 190 131-144
[6]  
Junior SB(2020)Authentication of cocoa (theobroma cacao) bean hybrids by nir-hyperspectral imaging and chemometrics Food Control 118 107445-55
[7]  
Arefi A(2006)Learning techniques used in computer vision for food quality evaluation: a review J Food Eng 72 39-433
[8]  
Motlagh AM(2013)Prediction of texture characteristics from extrusion food surface images using a computer vision system and artificial neural networks J Food Eng 118 426-487
[9]  
Khoshroo A(2013)Accurate determination of genetic identity for a single cacao bean, using molecular markers with a nanofluidic system, ensures cocoa authentication J Agri Food Chem 62 481-621
[10]  
Breiman L(1973)Textural features for image classification IEEE Trans Syst Man Cybern SMC-3 610-280