Image Blending-assisted Few-Shot Cross-Domain Similarity Learning and Adaptation Tasks for Ambiguous Hazardous Incidents

Jirayu Petchhan, S. Su
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Abstract

Nowadays, machine learning technology is growing exponentially, our research integrates AI and digital twin and/or transformation implemented in a wide range of industries. The issues can be seen in the fields which is the use of knowledge from both the virtual and physical world adapted all the way through. Part of obvious issue seems similar to deep transfer learning, such a domain shift occurrence during two domains. Hence, our proposed framework was developed to learn domain-invariant representation through Kernel Higher-order Tensor Matching (KHoM) and emphasized by cross-domain similarity learning via SoftTriple. Results, where are evaluated on public dataset and new fatal circumstance data, have been investigated that our framework is able to diminish discrepant domains from transferable on higher-level feature domain-invariant lightly on a less exemplary adaptations, but be obtained tremendously by the backing of the recognizability and realizing of object homogeneity through learning the likeness.
图像混合辅助的模糊危险事件的少镜头跨域相似性学习和自适应任务
如今,机器学习技术呈指数级增长,我们的研究将人工智能和数字孪生和/或转型集成在广泛的行业中实施。这些问题可以在使用虚拟世界和物理世界的知识的领域中看到。部分明显的问题似乎类似于深度迁移学习,这样的领域转移发生在两个领域。因此,我们提出的框架是通过核高阶张量匹配(kom)来学习域不变表示,并通过SoftTriple来强调跨域相似性学习。结果,在公共数据集和新的致命环境数据上进行了评估,研究结果表明,我们的框架能够在不太典型的适应上减少高级别特征域上可转移的差异域-不变性,但通过学习相似性来获得可识别性和实现对象同质性的巨大支持。
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