Truong Anh Minh, Luong Hiep Quang
IPI-TELIN, Ghent University-IMEC, Sint-Pietersnieuwstraat 41, Ghent, 9000, East Flanders, Belgium.
Curr Res Food Sci. 2024 May 13;8:100758. doi: 10.1016/j.crfs.2024.100758. eCollection 2024.
Today, environmental sustainability is one of the most critical issue. Hence, the food service industry is actively seeking ways to minimize its ecological footprint. One solution to address this issue is the adoption of reusable foodware in the food service industry. This approach requires a careful process for the collection and thorough cleaning of the foodware, ensuring it can be safely reused. However, reusable foodware might be damaged during the collection process, which can pose food safety hazards for customers. Additionally, there are cases where the cleaning process might not effectively remove all contaminants and therefore cannot be reused after the washing process. To ensure consumer safety, a manual inspection is typically conducted after the cleaning process. However, this step is labor-intensive and prone to human error, particularly as workers' attention may decrease over extended periods. Consequently, the adoption of precise and automated methods for detecting defects and contaminants is becoming crucial, not only to ensure safety but also to achieve scalability and enhance cost-efficiency in the pursuit of environmental sustainability. In our research, we explore various data augmentation strategies and the application of knowledge transfer from various samples of reusable food containers. This method only requires few images from a clean sample to teach the network about normal patterns, and to detect defects by identifying irregular details that do not exist in normal samples. This allows us to rapidly deploy the detection system even with a limited number of collected samples. Experimental results demonstrate the effectiveness of our approach in detecting both contamination and cracks on food containers.
如今,环境可持续性是最关键的问题之一。因此,食品服务行业正在积极寻求方法来尽量减少其生态足迹。解决这一问题的一个办法是在食品服务行业采用可重复使用的餐具。这种方法需要一个谨慎的过程来收集和彻底清洁餐具,以确保其能够安全地重复使用。然而,可重复使用的餐具在收集过程中可能会受损,这可能会给顾客带来食品安全隐患。此外,在某些情况下,清洁过程可能无法有效去除所有污染物,因此在洗涤后无法重复使用。为确保消费者安全,通常在清洁过程后进行人工检查。然而,这一步骤劳动强度大且容易出现人为错误,尤其是随着时间的延长工人的注意力可能会下降。因此,采用精确的自动化方法来检测缺陷和污染物变得至关重要,这不仅是为了确保安全,也是为了在追求环境可持续性的过程中实现可扩展性并提高成本效益。在我们的研究中,我们探索了各种数据增强策略以及从可重复使用食品容器的各种样本中进行知识转移的应用。这种方法只需要少量来自清洁样本的图像来让网络了解正常模式,并通过识别正常样本中不存在的不规则细节来检测缺陷。这使我们即使在收集的样本数量有限的情况下也能快速部署检测系统。实验结果证明了我们的方法在检测食品容器上的污染和裂缝方面的有效性。