BEGIN:VCALENDAR VERSION:2.0 PRODID:-//CERN//INDICO//EN BEGIN:VEVENT SUMMARY:Time-stamping photons with sub-nanosecond resolution for quantum i maging and telescopy DTSTART;VALUE=DATE-TIME:20250707T020000Z DTEND;VALUE=DATE-TIME:20250707T040000Z DTSTAMP;VALUE=DATE-TIME:20260423T184700Z UID:indico-event-26678@indico.ihep.ac.cn DESCRIPTION:I will discuss fast optical cameras based on the back-illumina ted silicon sensor and Timepix ASICs. The sensor has high quantum efficien cy and the chip provides nanosecond scale resolution and data-driven reado ut. The intensified version of the camera is single photon sensitive and h as been used in a variety of quantum imaging experiments as well as for ot her applications such as time-resolved neutron detection and ion imaging. As a motivation for fast imaging in astrophysics I will also review the st andard techniques of single-photon amplitude (Michelson) interferometry an d two-photon (Hanbury Brown & Twiss) intensity interferometry\, and then v isit recent ideas for how they can be improved in the optical through the use of entanglement distribution. A proposed new technique of two-photon a mplitude interferometry requires spectral binning and picosecond time-stam ping of single photons with a product of resolutions close to the Heisenbe rg Uncertainty Principle limit. I will show recent results and will discus s future directions for the technology.\n\nProf. Andrei Nomerotski is Seni or Researcher at Czech Technical University in Prague and Professor in Flo rida International University in Miami. He is expert in fast detectors of single photons and their applications in quantum imaging\, astrophysics an d beyond. He received his PhD in Padua University in Italy in 1996 and lat er worked in several high profile institutions (Oxford Univeristy\, Fermil ab and Brookhaven National Laboratory) in leading roles on high energy phy sics\, astrophysics and instrumentation projects.\n\n \nhttps://indico.ih ep.ac.cn/event/26678/ URL:https://indico.ihep.ac.cn/event/26678/ END:VEVENT END:VCALENDAR
Baidu
map