Seed-X LTD, 5691000, Magshimim, Israel.
Sci Rep. 2021 Nov 11;11(1):22030. doi: 10.1038/s41598-021-01712-6.
Achieving seed germination quality standards poses a real challenge to seed companies as they are compelled to abide by strict certification rules, while having only partial seed separation solutions at their disposal. This discrepancy results with wasteful disqualification of seed lots holding considerable amounts of good seeds and further translates to financial losses and supply chain insecurity. Here, we present the first-ever generic germination prediction technology that is based on deep learning and RGB image data and facilitates seed classification by seed germinability and usability, two facets of germination fate. We show technology competence to render dozens of disqualified seed lots of seven vegetable crops, representing different genetics and production pipelines, industrially appropriate, and to adequately classify lots by utilizing available crop-level image data, instead of lot-specific data. These achievements constitute a major milestone in the deployment of this technology for industrial seed sorting by germination fate for multiple crops.
实现种子发芽质量标准对种子公司来说是一项真正的挑战,因为他们必须遵守严格的认证规则,而只能部分使用种子分离解决方案。这种差异导致大量优质种子被浪费性地淘汰,进而转化为财务损失和供应链不安全。在这里,我们提出了第一个基于深度学习和 RGB 图像数据的通用发芽预测技术,该技术通过种子发芽能力和可用性来促进种子分类,这是发芽命运的两个方面。我们展示了技术能力,可以对来自七个蔬菜作物的数十个不合格种子批进行处理,这些作物代表了不同的遗传和生产管道,可以利用可用的作物级图像数据对批次进行适当分类,而不是使用特定批次的数据。这些成就是在多个作物的发芽命运工业种子分类中部署这项技术的重要里程碑。