Onions classification automation using deep learning with convolutional neural network method

Rinandha Puspadhani, Tuti Purwaningsih, Ayundyah Kesumawati, Arum Handini P., R. B. F. Hakim
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引用次数: 1

Abstract

Earn a living as farmers, supported by the presence of fertile soil and a tropical climate that is suitable for use in the agricultural sector, for example the horticulture subsector. Onion is an agricultural commodity that is needed by all people around the world. Onions are used as food flavoring enhancers and have great efficacy in terms of treatment. Onion needs always increase every year in accordance with high market demand which is in line with an increase in population, while onion production is seasonal [1]. In the district of Magelang, several farmers planted onions by mixing all types of onion seeds in one field. This is due to the unavailability of farmers’ land to be planted. After the harvest, all onion production is made into one place so that it is easier to package and distribute to onion suppliers. This makes the supplier takes a long time in separating the types of onions. Therefore, we need a technology and system to facilitate the filtering of onions based on the type so that, it is easy to recognize the species quickly and automatically with a more efficient time. With the Deep Learning technique, the machine is expected to be able to classify the differences between the onions. One method for classifying the Convolutional Neural Network (CNN) method is a development of Deep Learning techniques in terms of object recognition and object classification in high resolution images. Based on the results of the analysis conducted, the best architecture was obtained using a 80% data train comparison scenario; test data 20%, filter size 10, kernel size 3x3, size of learning rate 0.01 using ReLu activation, number of epoch 70, batch size 50 which uses the type of color image (RGB). produces an accuracy of 70%. Where for the results of the classification of predicted images of onions according to its category as many as 8 images for onions, 9 images for onions, and 4 for garlic.
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洋葱分类自动化使用深度学习与卷积神经网络方法
利用肥沃的土壤和适合农业部门(例如园艺分部门)使用的热带气候,以农民的身份谋生。洋葱是世界上所有人都需要的一种农产品。洋葱被用作食品增味剂,在治疗方面有很大的功效。洋葱需求量每年都会随着市场需求的增加而增加,这与人口的增加是一致的,而洋葱的生产是季节性的[1]。在Magelang地区,几个农民在一块地里混合了各种洋葱种子,种植洋葱。这是由于农民没有可供种植的土地。收获后,所有的洋葱生产都集中在一个地方,这样更容易包装和分发给洋葱供应商。这使得供应商要花很长时间来区分洋葱的种类。因此,我们需要一种技术和系统来方便地对洋葱进行分类过滤,以便快速、自动地识别品种,并提高效率。利用深度学习技术,这台机器有望区分洋葱之间的差异。卷积神经网络(CNN)分类方法的一种方法是在高分辨率图像的对象识别和对象分类方面对深度学习技术的发展。根据分析结果,采用80%的数据训练对比场景获得了最佳架构;测试数据20%,过滤器大小为10,内核大小为3x3,使用ReLu激活的学习率大小为0.01,epoch数为70,batch大小为50,使用彩色图像类型(RGB)。产生70%的精度。其中,根据其分类对洋葱的预测图像进行分类的结果,洋葱有8幅图像,洋葱有9幅图像,大蒜有4幅图像。
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