基于深度学习的光学质量控制

F. Wiesinger, Daniel Klepatsch, M. Bogner
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引用次数: 1

摘要

光学质量控制仍然经常由人来完成,并且总是有人为错误的风险。解决这一问题的现代方法是使用人工智能来提高性能和可靠性。本文重点实现了一个基于YOLOv3算法的光学质量控制原型。这是一个最先进的物体检测系统,它使用深度学习来检测图像中不同类别的物体。这个原型中的类不是不同种类的对象,而是草莓的不同质量等级。这项任务的数据集是通过拍照和使用互联网上的图像来收集的。这些图像上的草莓被标记并输入YOLOv3算法进行训练。尽管检出率很低,但结果表明,通常可以使用这种系统来检测不同质量水平的产品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optical quality control using deep learning
Optical quality control is still often performed by people and always carries the risk of human error. A modern approach in order to solve this issue is the usage of artificial intelligence to boost performance and reliability.This paper focuses on implementing a prototype for optical quality control based on the YOLOv3 algorithm. This is a state-of-the-art object detection system that uses deep learning to detect different classes of objects within an image. Instead of different kinds of objects, the classes in this prototype were different quality levels of a strawberry. The dataset for this task was gathered by taking photos and using images from the internet. The strawberries on these images were labeled and fed to the YOLOv3 algorithm for training. Despite the poor detection rate, the results showed that it is generally possible to use such systems for detecting different quality levels of products.
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