Catbreedsnet:一个使用卷积神经网络进行猫品种分类的Android应用程序

Anugrah Tri Ramadhan, Abas Setiawan
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引用次数: 0

摘要

世界上有这么多的猫比赛。如果饲养的猫受到疾病的影响,对猫品种的无知将是危险的,这会导致对饲养的猫的处理不当。此外,许多品种的猫有不同的食物从一个种族到另一个。问题是猫的饲养员不能轻易识别猫的品种。因此,技术需要帮助猫的看护者适当地对待猫。在这项研究中,我们提出了一种机器学习方法来识别猫的品种。这项研究旨在从安装在安卓智能手机上的猫图像中识别猫的品种。测试数据来自13个种族的猫的图像。本研究中使用的分类方法是使用迁移学习的卷积神经网络(CNN)算法。测试的基本型号为MobilenetV2、VGG16和InceptionV3。使用几个模型和几个实验场景对结果进行了测试,产生了使用MobilenetV2的最佳分类模型,准确率为82%。然后将最精确的模型嵌入到Android操作系统的应用程序中。然后这个应用程序被命名为Catbreednet。
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Catbreedsnet: An Android Application for Cat Breed Classification Using Convolutional Neural Networks
There are so many cat races in the world. Ignorance in recognizing cat breeds will be dangerous if the cat being kept is affected by a disease, which allows mishandling of the cat being kept. In addition, many cat breeds have different foods from one race to another. The problem is that a cat caretaker cannot easily recognize the cat breed. Therefore, technology needs to help a cat caretaker to treat cats appropriately. In this study, we proposed a Machine Learning approach to recognize cat breeds. This study aims to identify the cat breed from the cat images then deployed on an Android smartphone. It was tested with data from cat images of 13 races. The classification method applied in this study uses the Convolutional Neural Network (CNN) algorithm using transfer learning. The base models tested are MobilenetV2, VGG16, and InceptionV3. The results tested using several models and through several experimental scenarios produced the best classification model with an accuracy of 82% with MobilenetV2. The model with the best accuracy is then embedded in an application with the Android operating system. Then the application is named Catbreednet.
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审稿时长
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