Detection of Bovine Species on Image Using Machine Learning Classifiers

IF 1 Q3 MULTIDISCIPLINARY SCIENCES gazi university journal of science Pub Date : 2023-03-06 DOI:10.35378/gujs.1203685
Ali Tezcan Sarizeybek, A. Işık
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Abstract

There are too many cattle in the world and too many breeds of cattle. For someone who is new to cattle breeding, it may be difficult to tell which species their cattle are. In some cases, an experienced person may not understand the breeds of two cattle that are similar in appearance. In this study, the aim is to classify the cattle species with image processing methods and mobile applications written in Flutter and TensorFlow Lite. For classifying breeds, The VGG-16 algorithm was used for feature extraction. XGBoost and Random Forest algorithms were used for classification and the combined versions of the two methods were compared. In addition, SMOTE algorithm and image augmentation algorithms were used to prevent the imbalance of the dataset, the performance results of the combined versions of the two methods were compared. Images of different cattle species from different farms were obtained and the dataset was prepared, then trained image classification models and tested the trained models. As a result of performance tests, it’s obtained that the best model is VGG16+Random Forest+SMOTE+Augmentation with 88.77% accuracy result for this study. In the mobile application, first the cattle is detected with a pre-trained object detection model, and then the breed classification of the cattle on the image is made with image classification model.
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利用机器学习分类器检测图像上的牛种
世界上的牛太多了,牛的品种也太多了。对于刚开始养牛的人来说,可能很难分辨他们的牛是哪个品种。在某些情况下,一个有经验的人可能无法理解外表相似的两只牛的品种。在这项研究中,目的是用图像处理方法和用Flutter和TensorFlow Lite编写的移动应用程序对牛进行分类。品种分类采用VGG-16算法进行特征提取。使用XGBoost和Random Forest算法进行分类,并比较两种方法的组合版本。此外,采用SMOTE算法和图像增强算法防止数据集的不平衡,比较了两种方法组合版本的性能结果。获取不同养殖场不同牛种的图像,建立数据集,训练图像分类模型,并对训练好的模型进行测试。通过性能测试,得出本研究的最佳模型为VGG16+Random Forest+SMOTE+Augmentation,准确率为88.77%。在移动应用中,首先使用预训练的目标检测模型对牛进行检测,然后使用图像分类模型对图像上的牛进行品种分类。
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来源期刊
gazi university journal of science
gazi university journal of science MULTIDISCIPLINARY SCIENCES-
CiteScore
1.60
自引率
11.10%
发文量
87
期刊介绍: The scope of the “Gazi University Journal of Science” comprises such as original research on all aspects of basic science, engineering and technology. Original research results, scientific reviews and short communication notes in various fields of science and technology are considered for publication. The publication language of the journal is English. Manuscripts previously published in another journal are not accepted. Manuscripts with a suitable balance of practice and theory are preferred. A review article is expected to give in-depth information and satisfying evaluation of a specific scientific or technologic subject, supported with an extensive list of sources. Short communication notes prepared by researchers who would like to share the first outcomes of their on-going, original research work are welcome.
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