AI-Track-tive: open-source software for automated recognition and counting of surface semi-tracks using computer vision (artificial intelligence)

IF 2.7 Q2 GEOCHEMISTRY & GEOPHYSICS
Simon Nachtergaele, J. De Grave
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引用次数: 9

Abstract

Abstract. A new method for automatic counting of etched fission tracks in minerals is described and presented in this article. Artificial intelligence techniques such as deep neural networks and computer vision were trained to detect fission surface semi-tracks on images. The deep neural networks can be used in an open-source computer program for semi-automated fission track dating called “AI-Track-tive”. Our custom-trained deep neural networks use the YOLOv3 object detection algorithm, which is currently one of the most powerful and fastest object recognition algorithms. The developed program successfully finds most of the fission tracks in the microscope images; however, the user still needs to supervise the automatic counting. The presented deep neural networks have high precision for apatite (97 %) and mica (98 %). Recall values are lower for apatite (86 %) than for mica (91 %). The application can be used online at https://ai-track-tive.ugent.be (last access: 29 June 2021), or it can be downloaded as an offline application for Windows.
ai - tracktive:利用计算机视觉(人工智能)自动识别和计数地表半轨道的开源软件
摘要本文介绍了一种自动计数矿物中蚀刻裂变径迹的新方法。人工智能技术,如深度神经网络和计算机视觉被训练来检测图像上的裂变表面半轨迹。深度神经网络可以用于开源计算机程序,用于半自动裂变轨迹测年,称为“AI-Track-tive”。我们定制训练的深度神经网络使用yolov3对象检测算法,这是目前最强大和最快的对象识别算法之一。开发的程序成功地找到了显微镜图像中的大部分裂变轨迹;但是,用户仍然需要监督自动计数。所提出的深度神经网络对磷灰石(97%)和云母(98%)具有较高的精度。磷灰石的回忆值(86%)低于云母(91%)。该应用程序可以在https://ai-track-tive.ugent.be上在线使用(最后一次访问:2021年6月29日),也可以作为Windows的离线应用程序下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Geochronology
Geochronology Earth and Planetary Sciences-Paleontology
CiteScore
6.60
自引率
0.00%
发文量
35
审稿时长
19 weeks
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