Klasifikasi Buah dan Sayuran Segar atau Busuk Menggunakan Convolutional Neural Network

Eka Aenun Nisa Munfaati, Arita Witanti
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Abstract

Fresh fruits and vegetables contain many nutrients, such as minerals, vitamins, antioxidants, and beneficial fiber, superior to those found in rotten or almost rotten produce. On the other hand, fruits and vegetables that are nearly spoiled or already rotten have significantly lost their nutritional value. Rotten produce also harbors bacteria and fungi that can lead to infections and food poisoning when consumed. Convolutional Neural Network (CNN) offers a programmable solution for classifying fresh and rotten fruits and vegetables. Image processing using the TensorFlow library is employed in this classification process. During testing on the training data, the CNN achieved an accuracy of 90.42%. In comparison, the validation accuracy reached 94.21% when using the SGD optimizer, 20 epochs, a batch size 16, and a learning rate of 0.01. For the testing data, the accuracy obtained was 80.83%.
使用卷积神经网络对新鲜或腐烂水果和蔬菜进行分类
新鲜水果和蔬菜含有多种营养成分,如矿物质、维生素、抗氧化剂和有益纤维,这些营养成分优于腐烂或几乎腐烂的农产品。另一方面,几乎变质或已经腐烂的水果和蔬菜的营养价值已大大降低。腐烂的农产品还会滋生细菌和真菌,食用后会导致感染和食物中毒。卷积神经网络(CNN)为新鲜和腐烂水果和蔬菜的分类提供了一种可编程的解决方案。在分类过程中,使用 TensorFlow 库进行图像处理。在对训练数据进行测试期间,CNN 的准确率达到了 90.42%。相比之下,在使用 SGD 优化器、20 个历元、批量大小为 16 和学习率为 0.01 时,验证准确率达到了 94.21%。测试数据的准确率为 80.83%。
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