Rapid Automatic Multiple Moving Objects Detection Method Based on Feature Extraction from Images with Non-sidereal Tracking
Lei Wang, Xiaoming Zhang, Chunhai Bai, Haiwen Xie, Juan Li, Jiayi Ge,, Jianfeng Wang, Xianqun Zeng, Jiantao Sun, and Xiaojun Jiang

TL;DR
This paper presents a rapid, accurate multi-object detection method for wide-field images with non-sidereal tracking, combining feature extraction and neural networks to distinguish moving objects from stars.
Contribution
The proposed method innovatively integrates feature extraction and neural network classification to improve detection speed and accuracy in complex astronomical images.
Findings
Achieves 94.72% detection accuracy
False alarm rate of 5.02%
Processing time of 0.66 seconds per frame
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…
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Taxonomy
TopicsRemote Sensing and Land Use · Advanced Algorithms and Applications · Advanced Measurement and Detection Methods
