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Towards an automatic filament detector with a Faster R-CNN on MAST-U

机译:迈向MAST-U上具有Faster R-CNN的自动灯丝检测器

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In the present magnetically confined plasmas, the prediction of particle loading on material surfaces is a primary concern in view of the protection of plasma facing components for next step devices. Thus, an understanding of filament dynamics is needed. In this context, this work aims to develop an automatic detector for filaments arising in the MAST-U plasma. The identification of the filaments has been done starting from 2D images acquired with a fast visible camera. Therefore, it can be faced as an image object recognition problem. Currently, the object recognition is a key output of deep learning and machine learning algorithms. In this paper, a database of several thousands of images generated by a synthetic diagnostic, which reproduces the statistical properties of experimental filaments in terms of position, size and intensity has been used. The synthetic images are preprocessed by mapping them onto the toroidal midplane of the machine. Then a Faster R-CNN is customized to the problem of identifying the filaments. In particular, in order to enhance the performance of the detector, a suitable definition of the target-boxes defining the filament positions and sizes is adopted with good results.
机译:在当前的磁约束等离子体中,考虑到用于下一步设备的面向等离子体的部件的保护,对材料表面上的颗粒负载的预测是主要关注的问题。因此,需要了解灯丝动力学。在这种情况下,这项工作旨在开发一种自动检测器,用于检测MAST-U等离子体中出现的细丝。细丝的识别已从使用快速可见相机获取的2D图像开始。因此,它可以面对图像对象识别问题。当前,对象识别是深度学习和机器学习算法的关键输出。在本文中,使用了由合成诊断程序生成的数千张图像的数据库,该数据库再现了位置,大小和强度方面实验丝的统计特性。通过将合成图像映射到机器的环形中平面进行预处理。然后定制Faster R-CNN来解决细丝识别问题。特别地,为了增强检测器的性能,采用适当的限定细丝位置和尺寸的靶盒的定义,具有良好的结果。

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