High contrast optical imaging of companions: the case of the brown dwarf binary HD-130948BC
L. Labadie, R. Rebolo, I. Villo, J. A. Perez-Prieto, A. Perez-Garrido,, S. R. Hildebrandt, B. Femenia, A. Diaz-Sanchez, V. J. S. Bejar, A. Oscoz, R., Lopez, J. Piqueras, L. F. Rodriguez

TL;DR
This study demonstrates the use of fast optical imaging combined with wavelet-based post-processing to detect and analyze faint brown dwarf companions near bright stars, achieving high contrast and resolution at small separations.
Contribution
It introduces a novel combination of Lucky Imaging and wavelet filtering techniques for high contrast optical detection of faint companions, specifically resolving the brown dwarf binary HD130948BC.
Findings
First optical detection of HD130948BC binary with high SNR
Achieved 0.1" resolution imaging of the binary
Validated wavelet filtering to enhance faint source detectability
Abstract
High contrast imaging at optical wavelengths is limited by the modest correction of conventional near-IR optimized AO systems.We take advantage of new fast and low-readout-noise detectors to explore the potential of fast imaging coupled to post-processing techniques to detect faint companions to stars at small separations. We have focused on I-band direct imaging of the previously detected brown dwarf binary HD130948BC,attempting to spatially resolve the L2+L2 benchmark system. We used the Lucky-Imaging instrument FastCam at the 2.5-m Nordic Telescope to obtain quasi diffraction-limited images of HD130948 with ~0.1" resolution.In order to improve the detectability of the faint binary in the vicinity of a bright (I=5.19 \pm 0.03) solar-type star,we implemented a post-processing technique based on wavelet transform filtering of the image which allows us to strongly enhance the presence of…
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