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首页> 外文期刊>Publications of the Astronomical Society of the Pacific >The IPAC Image Subtraction and Discovery Pipeline for the Intermediate Palomar Transient Factory
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The IPAC Image Subtraction and Discovery Pipeline for the Intermediate Palomar Transient Factory

机译:中间巴马瞬态工厂的IPAC图像减法和发现管道

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We describe the near real-time transient-source discovery engine for the intermediate Palomar Transient Factory (iPTF), currently in operations at the Infrared Processing and Analysis Center (IPAC), Caltech. We coin this system the IPAC/iPTF Discovery Engine (or IDE). We review the algorithms used for PSF-matching, image subtraction, detection, photometry, and machine-learned (ML) vetting of extracted transient candidates. We also review the performance of our ML classifier. For a limiting signal-to-noise ratio of 4 in relatively unconfused regions, bogus candidates from processing artifacts and imperfect image subtractions outnumber real transients by; 10:1. This can be considerably higher for image data with inaccurate astrometric and/or PSF-matching solutions. Despite this occasionally high contamination rate, the ML classifier is able to identify real transients with an efficiency (or completeness) of; 97% for a maximum tolerable false-positive rate of 1% when classifying raw candidates. All subtraction-image metrics, source features, ML probability-based real-bogus scores, contextual metadata from other surveys, and possible associations with known Solar System objects are stored in a relational database for retrieval by the various science working groups. We review our efforts in mitigating false-positives and our experience in optimizing the overall system in response to the multitude of science projects underway with iPTF.
机译:我们描述了目前在红外加工和分析中心(IPAC),CALTECH的运营中的中级Palomar瞬态工厂(IPTF)的近实时瞬态源发现引擎。我们将该系统硬盘IPAC / IPTF发现引擎(或IDE)。我们审查了用于PSF匹配,图像减法,检测,光度测量和机器学习(ML)扫描的算法的算法。我们还审查了ML分类器的性能。为了限制相对不携带的区域中4的噪声比,伪传候选来自处理伪影和不完美的图像减法超过实际瞬态; 10:1。对于具有不准确的Astromicric和/或PSF匹配解决方案的图像数据,这可以相当高。尽管偶尔污染率高,但ML分类器能够识别具有效率(或完整性)的真实瞬态;在分类原始候选时,最大可容许的假阳性率为1%的97%。所有减法图像指标,源特征,基于概率的真实伪造得分,来自其他调查的上下文元数据以及与已知的太阳系对象的可能关联存储在关系数据库中,以通过各种科学工作组检索。我们审查了努力减轻虚假积极效力,以及我们在优化整体系统中优化整体系统的经验,以应对IPTF正在进行的众多科学项目。

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