In quantum machine field, detecting two-dimensional (2D) materials in Silicon chips is one of the most critical problems. Instance segmentation can be considered as a potential approach to solve this problem. However, similar to other deep learning methods, the instance segmentation requires a large scale training dataset and high quality annotation in order to achieve a considerable performance. In practice, preparing the training dataset is a challenge since annotators have to deal with a large image, e.g 2K resolution, and extremely dense objects in this problem. In this work, we present a novel method to tackle the problem of missing annotation in instance segmentation in 2D quantum material identification. We propose a new mechanism for automatically detecting false negative objects and an attention based loss strategy to reduce the negative impact of these objects contributing to the overall loss function. We experiment on the 2D material detection datasets, and the experiments show our method outperforms previous works.
翻译:在量子机领域,检测硅芯片中的二维(2D)材料是最关键的问题之一。可以将例分解视为解决这一问题的一种潜在方法。然而,与其他深层学习方法类似,例分解需要大规模培训数据集和高质量的批注,才能取得显著的性能。实际上,编写培训数据集是一项挑战,因为批注者必须处理一幅巨大的图像,如2K分辨率,以及这一问题中极其稠密的物体。在这项工作中,我们提出了一种新颖的方法来解决2D量量子识别中在例分解中缺失注解的问题。我们提出了一种自动检测假负物体的新机制和一种关注损失战略,以减少这些物体对总体损失功能的负面影响。我们实验了2D物质检测数据集,实验显示了我们的方法超越了以前的工作。