Lobster eye telescopes are ideal monitors to detect X-ray transients, because they could observe celestial objects over a wide field of view in X-ray band. However, images obtained by lobster eye telescopes are modified by their unique point spread functions, making it hard to design a high efficiency target detection algorithm. In this paper, we integrate several machine learning algorithms to build a target detection framework for data obtained by lobster eye telescopes. Our framework would firstly generate two 2D images with different pixel scales according to positions of photons on the detector. Then an algorithm based on morphological operations and two neural networks would be used to detect candidates of celestial objects with different flux from these 2D images. At last, a random forest algorithm will be used to pick up final detection results from candidates obtained by previous steps. Tested with simulated data of the Wide-field X-ray Telescope onboard the Einstein Probe, our detection framework could achieve over 94% purity and over 90% completeness for targets with flux more than 3 mCrab (9.6 * 10-11 erg/cm2/s) and more than 94% purity and moderate completeness for targets with lower flux at acceptable time cost. The framework proposed in this paper could be used as references for data processing methods developed for other lobster eye X-ray telescopes.
翻译:龙虾眼望远镜是用来探测X射线瞬态的理想监测器,因为它们可以在X射线波段的宽广视野范围内观测天体。然而,龙虾眼望远镜获得的图像却被其独特的点扩展功能所修改,因此很难设计出高效的目标检测算法。在本文中,我们结合了几种机器学习算法,以建立龙虾眼望远镜获得的数据的目标检测框架。我们的框架将首先根据探测器上的光谱位置生成两张2D图像,其像素比例不同。然后,将使用基于形态操作和两个神经网络的算法来探测与这些2D图像不同通量的天体候选对象。最后,将使用随机森林算法从候选人中获取最终检测结果。在爱因斯坦·普罗贝板上,用宽场X射线望远镜的模拟数据测试,我们的检测框架可以达到94%以上的纯度和90%以上的完整度,而目标的通量超过3 mCrab(9.6 * 10-11 ERG/cm2/2) 和两个神经网络将用来检测2天体变化的天体的天体图。最后检测结果将使用94%以上的参考基准,用于低量处理。