基于深度神经网络分类的香蕉品质自动识别

Deyner Julian Navarro Ortiz, Silvia Alejandra Martinez Lopez
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引用次数: 0

摘要

由于需要优化从种植水果和蔬菜到其分销和商业化所涉及的过程所需的时间和精力,无论是用于出口还是在国内商业化,哥伦比亚已经逐步实现了农业工业化。水果在作为最终产品被取出之前进行分类是一个非常重要的过程,因为必须遵循监管机构发布的确定收获产品质量的预定准则。作者根据NTC 1190标准(哥伦比亚规范)提出了一种低成本的香蕉自动分类原型,使用经过迁移学习训练的MobileNetV2架构的卷积神经网络(CNN),并在树莓派3B+上实现,带有摄像头来监控样本和一个简单的与用户交互的界面,以及一个设计用于包含硬件的案例,并允许以最紧凑的方式访问其端口。本工作中用于训练、验证和测试的数据集包括来自两个免费访问的水果数据库和其他研究人员获取的图像。计算精度达到87%,保证了系统的可靠性和较低的计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Identification of banana quality with Deep Neural Network Classification (DNN)
The industrialization of agriculture has gradually taken place in Colombia, because of the need to optimize the time and effort required for the processes involved from growing fruits and vegetables to their distribution and commercialization, whether they are meant for exportation or commercialization within the country. Fruit classification is a very important process before they are being taken out as a final product, since predetermined guidelines issued by regulatory entities that define the quality of the harvested product must be followed. The authors propose a low-cost prototype for the automatic classification of bananas according to the NTC 1190 standard (Colombian normative), using a convolutional neural network (CNN) of MobileNetV2 architecture trained through transfer learning and implemented in a Raspberry Pi 3B+ with a camera to monitor the specimens and an easy interface for interaction with the user, as well as a case designed to contain the hardware and allow access to its ports in the most compact way possible. The datasets utilized in this work for training, validation, and testing, consists of images taken from two free access fruit database and others acquired by the researchers. The achieved precision is 87 %, enough to ensure reliability and low computational cost.
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