PynPoint: An Image Processing Package for Finding Exoplanets
Adam Amara, Sascha Quanz

TL;DR
PynPoint is a Python software package that uses principal component analysis to improve detection and flux estimation of exoplanets in high-contrast imaging data, outperforming existing methods like LOCI.
Contribution
The paper introduces PynPoint, a novel PCA-based image processing tool that enhances exoplanet detection sensitivity and flux measurement accuracy in direct imaging data.
Findings
PynPoint achieves a detection sensitivity five times better than LOCI at small inner working angles.
PynPoint provides more stable flux measurements compared to LOCI.
Application to real data successfully detects beta Pictoris b with high signal-to-noise.
Abstract
We present the scientific performance results of PynPoint, our Python-based software package that uses principle component analysis to detect and estimate the flux of exoplanets in two dimensional imaging data. Recent advances in adaptive optics and imaging technology at visible and infrared wavelengths have opened the door to direct detections of planetary companions to nearby stars, but image processing techniques have yet to be optimized. We show that the performance of our approach gives a marked improvement over what is presently possible using existing methods such as LOCI. To test our approach, we use real angular differential imaging (ADI) data taken with the adaptive optics assisted high resolution near-infrared camera NACO at the VLT. These data were taken during the commissioning of the apodising phase plate (APP) coronagraph. By inserting simulated planets into these data,…
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