流星监测的深度机器学习:迁移学习和梯度加权类激活映射的进展

IF 1.8 4区 物理与天体物理 Q3 ASTRONOMY & ASTROPHYSICS
Eloy Peña-Asensio , Josep M. Trigo-Rodríguez , Pau Grèbol-Tomàs , David Regordosa-Avellana , Albert Rimola
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引用次数: 0

摘要

近几十年来,流星研究中光学探测系统的使用急剧增加,导致大量数据被分析。自动流星探测工具对于研究源源不断的流星体流通量,回收新鲜的陨石,以及更好地了解我们的太阳系至关重要。在流星探测方面,传统的方法是手工区分流星和非流星图像的误报,这非常耗时。为了解决这个问题,我们开发了一个全自动的管道,使用卷积神经网络(cnn)对候选流星探测进行分类。我们的新方法甚至可以在包含云、月亮和建筑物等静态元素的图像中检测到流星。为了在每一帧内精确定位流星,我们采用了梯度加权类激活映射(Grad-CAM)技术。该方法通过将最后一个卷积层的激活值与该层特征映射上的梯度平均值相乘,方便了感兴趣区域的识别。通过将这些发现与来自第一卷积层的激活图相结合,我们有效地确定了流星最可能的像素位置。我们在西班牙流星网络(SPMN)收集的大型数据集上训练和评估了我们的模型,并达到了98%的精度。我们在这里提出的新方法有可能减少流星科学家和观测站操作员的工作量,提高流星跟踪和分类的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep machine learning for meteor monitoring: Advances with transfer learning and gradient-weighted class activation mapping

In recent decades, the use of optical detection systems for meteor studies has increased dramatically, resulting in huge amounts of data being analyzed. Automated meteor detection tools are essential for studying the continuous meteoroid incoming flux, recovering fresh meteorites, and achieving a better understanding of our Solar System. Concerning meteor detection, distinguishing false positives between meteor and non-meteor images has traditionally been performed by hand, which is significantly time-consuming. To address this issue, we developed a fully automated pipeline that uses Convolutional Neural Networks (CNNs) to classify candidate meteor detections. Our new method is able to detect meteors even in images that contain static elements such as clouds, the Moon, and buildings. To accurately locate the meteor within each frame, we employ the Gradient-weighted Class Activation Mapping (Grad-CAM) technique. This method facilitates the identification of the region of interest by multiplying the activations from the last convolutional layer with the average of the gradients across the feature map of that layer. By combining these findings with the activation map derived from the first convolutional layer, we effectively pinpoint the most probable pixel location of the meteor. We trained and evaluated our model on a large dataset collected by the Spanish Meteor Network (SPMN) and achieved a precision of 98%. Our new methodology presented here has the potential to reduce the workload of meteor scientists and station operators and improve the accuracy of meteor tracking and classification.

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来源期刊
Planetary and Space Science
Planetary and Space Science 地学天文-天文与天体物理
CiteScore
5.40
自引率
4.20%
发文量
126
审稿时长
15 weeks
期刊介绍: Planetary and Space Science publishes original articles as well as short communications (letters). Ground-based and space-borne instrumentation and laboratory simulation of solar system processes are included. The following fields of planetary and solar system research are covered: • Celestial mechanics, including dynamical evolution of the solar system, gravitational captures and resonances, relativistic effects, tracking and dynamics • Cosmochemistry and origin, including all aspects of the formation and initial physical and chemical evolution of the solar system • Terrestrial planets and satellites, including the physics of the interiors, geology and morphology of the surfaces, tectonics, mineralogy and dating • Outer planets and satellites, including formation and evolution, remote sensing at all wavelengths and in situ measurements • Planetary atmospheres, including formation and evolution, circulation and meteorology, boundary layers, remote sensing and laboratory simulation • Planetary magnetospheres and ionospheres, including origin of magnetic fields, magnetospheric plasma and radiation belts, and their interaction with the sun, the solar wind and satellites • Small bodies, dust and rings, including asteroids, comets and zodiacal light and their interaction with the solar radiation and the solar wind • Exobiology, including origin of life, detection of planetary ecosystems and pre-biological phenomena in the solar system and laboratory simulations • Extrasolar systems, including the detection and/or the detectability of exoplanets and planetary systems, their formation and evolution, the physical and chemical properties of the exoplanets • History of planetary and space research
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