Target Detection Framework for Lobster Eye X-Ray Telescopes with Machine Learning Algorithms

12/11/2022
by   Peng Jia, et al.
0

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 for targets with flux more than 3 mCrab (9.6 * 10-11 erg/cm2/s) and more than 94 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.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset