ATLAS数据管道中探测小行星的深度神经网络

Noa Kaplan, R. Loveland, L. Denneau
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引用次数: 1

摘要

“小行星对地撞击最后预警系统”(ATLAS)目前使用两级二元分类器从电子和光学人工制品中过滤移动的天文物体,以检测可能最终接近或撞击地球的小行星。任何通过ATLAS过滤器的检测都由人工分析人员进行检查。当前过滤器的结果包含假阳性多于真阳性,因此大多数检测被分析人员分类为假。这些伪造的轨道给分析人员带来了不必要的工作,并增加了将探测到的物体分类为真正的近地物体所需的时间,潜在地减少了碰撞的警告时间。为了减少这种不必要的努力,我们扩展了当前的分类器以纳入动态运动数据。我们开发了两个工程特征,它们与原始分类器的输出相结合,作为深度神经网络的输入特征。该网络生成被检测对象被指定为真实对象(即实际的,移动的,天文对象)的概率,而不是被归类为伪造对象(即绝大多数由光学或噪声伪影引起的错误检测之一)。新的分类器减少了59%的假阳性,同时保持了几乎为零的低假阴性率。
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Deep Neural Networks for Detecting Asteroids in the ATLAS Data Pipeline
The ”Asteroid Terrestrial-impact Last Alert System” (ATLAS) currently uses a two stage binary classifier to filter moving astronomical objects from electronic and optical artifacts, in order to detect asteroids that may eventually pass close to, or impact, Earth. Any detections that pass ATLAS’s filter are examined by human analysts. The results of the current filter contains more false positives than true positives, so that the majority of detections are classified as bogus by the analysts. These bogus tracklets cause unnecessary work for the analysts, and increase the time it takes to classify a detection as a real near Earth object, potentially decreasing warning time for a collision. In order to reduce this unnecessary effort, we extend the current classifier to incorporate dynamic motion data. We develop two engineered features which are combined with the output of the original classifier as the input features of a deep neural network. This network generates the probability of a detected object being designated real (i.e. an actual, moving, astronomical object), as opposed to being classified as bogus (i.e. one of the vast majority of false detections resulting from optical or noise artifacts). The new classifier decreases false positives by 59%, while maintaining a low false negative rate at virtually zero.
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