Singapore has been striving to improve the provision of healthcare services to her people. In this course, the government has taken note of the deficiency in regulating and supervising people's nutrient intake, which is identified as a contributing factor to the development of chronic diseases. Consequently, this issue has garnered significant attention. In this paper, we share our experience in addressing this issue and attaining medical-grade nutrient intake information to benefit Singaporeans in different aspects. To this end, we develop the FoodSG platform to incubate diverse healthcare-oriented applications as a service in Singapore, taking into account their shared requirements. We further identify the profound meaning of localized food datasets and systematically clean and curate a localized Singaporean food dataset FoodSG-233. To overcome the hurdle in recognition performance brought by Singaporean multifarious food dishes, we propose to integrate supervised contrastive learning into our food recognition model FoodSG-SCL for the intrinsic capability to mine hard positive/negative samples and therefore boost the accuracy. Through a comprehensive evaluation, we present performance results of the proposed model and insights on food-related healthcare applications. The FoodSG-233 dataset has been released in https://foodlg.comp.nus.edu.sg/.
翻译:新加坡一直在努力改善其为人民提供医疗保健服务的能力。政府注意到规范和监督人们的营养摄入不足的问题,这是慢性疾病发展的一个贡献因素。因此,这个问题引起了重视。在本文中,我们分享了解决这个问题的经验,并获得医疗级别的营养摄入信息,以惠及新加坡人的不同方面。为此,我们开发了FoodSG平台,孵化了多样化面向医疗保健的应用作为服务在新加坡,考虑到它们的共同需求。我们进一步确定了本地食品数据集的深刻含义,并系统地清理和整理了本地化的新加坡食品数据集FoodSG-233。为了克服由新加坡多样化的饮食菜肴带来的识别性能障碍,我们建议将有监督的对比学习集成到我们的食品识别模型FoodSG-SCL中,以获取挖掘困难正/负样本的内在能力,从而提高准确性。通过全面的评估,我们呈现了所提出模型的性能结果和食品相关医疗保健应用的见解。FoodSG-233数据集已在 https://foodlg.comp.nus.edu.sg/ 上发布。