The SKA pulsar search pipeline will be used for real time detection of pulsars. Modern radio telescopes such as SKA will be generating petabytes of data in their full scale of operation. Hence experience-based and data-driven algorithms become indispensable for applications such as candidate detection. Here we describe our findings from testing a state of the art object detection algorithm called Mask R-CNN to detect candidate signatures in the SKA pulsar search pipeline. We have trained the Mask R-CNN model to detect candidate images. A custom annotation tool was developed to mark the regions of interest in large datasets efficiently. We have successfully demonstrated this algorithm by detecting candidate signatures on a simulation dataset. The paper presents details of this work with a highlight on the future prospects.
翻译:SKA脉冲星搜索管道将用于实时探测脉冲星体。SKA等现代射电望远镜将在其全部运行规模中生成数据小字节。因此,基于经验和数据驱动的算法对于候选人探测等应用变得不可或缺。这里我们描述了我们通过测试一种叫作Mask R-CNN的先进物体检测算法检测SKA脉冲星搜索管道中候选人签名的结果。我们训练了Mask R-CNN模型检测候选图像。我们开发了一个定制说明工具,以有效标示大型数据集感兴趣的区域。我们成功地展示了这种算法,在模拟数据集中检测了候选签名。本文介绍了这项工作的详细情况,并重点介绍了未来的前景。