Rapid automatic multiple moving objects detection method based on feature extraction from images with non-sidereal tracking

IF 4.7 3区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS Monthly Notices of the Royal Astronomical Society Pub Date : 2024-09-09 DOI:10.1093/mnras/stae2073
Lei Wang, Xiaoming Zhang, Chunhai Bai, Haiwen Xie, Juan Li, Jiayi Ge, Jianfeng Wang, Xianqun Zeng, Jiantao Sun, Xiaojun Jiang
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Abstract

Optically observing and monitoring moving objects, both natural and artificial, is important to human space security. Non-sidereal tracking can improve the system’s limiting magnitude for moving objects, which benefits the surveillance. However, images with non-sidereal tracking include complex background, as well as objects with different brightness and moving mode, posing a significant challenge for accurate multi-object detection in such images, especially in wide field of view (WFOV) telescope images. To achieve a higher detection precision in a higher speed, we proposed a novel object detection method, which combines the source feature extraction and the neural network. First, our method extracts object features from optical images such as centroid, shape, and flux. Then it conducts a naive labeling based on those features to distinguish moving objects from stars. After balancing the labeled data, we employ it to train a neural network aimed at creating a classification model for point-like and streak-like objects. Ultimately, based on the neural network model’s classification outcomes, moving objects whose motion modes consistent with the tracked objects are detected via track association, while objects with different motion modes are detected using morphological statistics. The validation, based on the space objects images captured in target tracking mode with the 1-meter telescope at Nanshan, Xinjiang Astronomical Observatory, demonstrates that our method achieves 94.72% detection accuracy with merely 5.02% false alarm rate, and a processing time of 0.66s per frame. Consequently, our method can rapidly and accurately detect objects with different motion modes from wide-field images with non-sidereal tracking.
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基于图像特征提取和非实时跟踪的多移动物体快速自动检测方法
光学观测和监测移动物体(包括自然物体和人造物体)对人类太空安全非常重要。非实时跟踪可以提高系统对移动物体的限制幅度,从而有利于监控。然而,非实时跟踪的图像包括复杂的背景,以及亮度和运动模式不同的物体,这给在此类图像中,尤其是在宽视场(WFOV)望远镜图像中准确检测多物体带来了巨大挑战。为了以更快的速度实现更高的检测精度,我们提出了一种结合了光源特征提取和神经网络的新型物体检测方法。首先,我们的方法从光学图像中提取物体特征,如中心点、形状和通量。然后,根据这些特征进行天真标记,以区分运动物体和恒星。平衡标注数据后,我们将其用于训练神经网络,旨在创建点状和条纹状物体的分类模型。最终,根据神经网络模型的分类结果,通过轨迹关联检测出运动模式与被跟踪物体一致的运动物体,而通过形态统计检测出运动模式不同的物体。基于新疆天文台南山 1 米望远镜在目标跟踪模式下捕获的空间物体图像的验证表明,我们的方法达到了 94.72% 的检测准确率,误报率仅为 5.02%,每帧处理时间为 0.66s。因此,我们的方法可以从非实时跟踪的宽视场图像中快速、准确地检测出不同运动模式的物体。
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来源期刊
CiteScore
9.10
自引率
37.50%
发文量
3198
审稿时长
3 months
期刊介绍: Monthly Notices of the Royal Astronomical Society is one of the world''s leading primary research journals in astronomy and astrophysics, as well as one of the longest established. It publishes the results of original research in positional and dynamical astronomy, astrophysics, radio astronomy, cosmology, space research and the design of astronomical instruments.
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