Quality control is a key activity performed by manufacturing enterprises to ensure products meet quality standards and avoid potential damage to the brand's reputation. The decreased cost of sensors and connectivity enabled an increasing digitalization of manufacturing. In addition, artificial intelligence enables higher degrees of automation, reducing overall costs and time required for defect inspection. In this research, we compare three active learning approaches and five machine learning algorithms applied to visual defect inspection with real-world data provided by Philips Consumer Lifestyle BV. Our results show that active learning reduces the data labeling effort without detriment to the models' performance.
翻译:质量控制是制造企业为确保产品达到质量标准并避免品牌声誉受到潜在损害而开展的一项关键活动。传感器和连通成本的降低使得制造业日益数字化。此外,人工智能可以提高自动化程度,降低缺陷检查所需的总成本和时间。在这项研究中,我们比较了三种积极的学习方法和五个机器学习算法,这些算法适用于视觉缺陷检查,并使用菲利普消费者生活方式BV提供的现实世界数据。我们的结果表明,积极学习会减少数据标签工作,但不会损害模型的性能。