使用YOLOv3进行盐中的污垢检测

M. A. Malbog, Marte D. Nipas, Jennalyn N. Mindoro, Julie Ann B. Susa, Joshua S. Gulmatico, Aimee G. Acoba
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引用次数: 0

摘要

盐是维持人的生命所必需的。不受欢迎的部分如污垢的存在影响了提供给顾客的盐的整体质量。人们的肉眼很难区分盐和土;因此,将盐和污垢分开需要花费时间和精力。看不见的污垢也会增加制造细盐的总重量,手动清除这些污垢可能很耗时。人工智能(AI)算法使用对象分类系统来识别类中的某些项目作为研究主题。系统将图片中的事物分类,其中具有相似质量的对象被分组,而其他对象则被忽略,直到特别配置。本研究的目的是开发一种检测系统,用于检测混合在盐中的不需要的污垢。该系统可以嵌入到盐制造过程的污垢去除系统中。该研究收集了500张盐图像作为数据集,并将其分为两部分:训练设置为70%,测试设置为30%。使用收集到的数据集和Yolov3预训练的物体检测模型来创建模型,用于创建污垢检测系统的模型,训练有50个epoch。研究人员使用十(10)张污垢照片进行测试,以评估系统的准确性,他们达到了70%的准确率。本研究还通过导入待检测的视频片段对系统进行了评估,系统很容易检测出大部分污垢。实验结果表明,该系统对盐类污垢的检测是可靠的、有效的。该系统可以通过添加数据增强、迁移学习和模型选择等技术来提高准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SaDiTect: Dirt Detection in Salt Using YOLOv3
Salt is essential for maintaining people's life. The presence of undesirable pieces such as dirt contributes to the overall quality of salt provided to customers. People's naked eyes seldom distinguish between salt and dirt; as a result, it would take time and effort to separate salt and dirt. Unseen dirt can also add to the total weight of manufacturing fine salt, and removing this dirt manually can be time-consuming. Artificial Intelligence (AI) algorithms employ object categorization systems to recognize certain items in a class as the topic of study. The systems aggregate things in pictures into categories where objects having similar qualities are grouped along, while others are ignored until specifically configured. The objective of the study is to develop a detection system for unwanted dirt that is mixed in salt. This system can be embedded into a dirt removal system for the salt manufacturing process. The study gathered 500 images of salt as the dataset and divided it into two (2) parts: training is set to 70% and for testing is 30%. creating the model using the dataset that has been gathered together with the Yolov3 pre-trained model for object detection was used in creating the model for the dirt detection system and the training has 50 epochs. The researchers conducted testing using ten (10) photos of dirt to assess the system's accuracy, and they reached a 70 percent accuracy. This study also evaluated the system by importing video clips to be detected and the system easily detected most of the dirt. This demonstrates that the system is trustworthy and effective in detecting dirt in the salt. This system can be improved in terms of accuracy by adding techniques like data augmentation, transfer learning, and model selection.
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