CCAPP Seminar: Biprateep Dey (Pittsburgh)

Biprateep Dey
October 3, 2023
12:00PM - 1:00PM
PRB 4138 & Zoom

Date Range
2023-10-03 12:00:00 2023-10-03 13:00:00 CCAPP Seminar: Biprateep Dey (Pittsburgh) Speaker: Biprateep Dey (Pittsburgh) Photometric Redshifts for Next Generation of Sky Surveys Studies of cosmology, galaxy evolution, and astronomical transients with the next generation of imaging surveys (like LSST, Euclid, and Roman Observatories) are all critically dependent on estimates of galaxy redshifts from imaging data alone; the resulting measurements are called photometric redshifts or photo-z's. Traditional photo-z estimation methods use galaxy colors and magnitudes as inputs thereby throwing away the rich pixel-level information present in resolved images. Moreover, the uncertainty estimates produced by these methods are not statistically well defined. In this presentation, I will discuss new deep learning-based photo-z estimation methods that take images directly as inputs and provide state-of-the-art photo-z prediction accuracy while being interpretable and requiring less training data. In addition to that, I will talk about a statistical formalism to produce well-calibrated photo-z uncertainty estimates that are agnostic and employ minimal assumptions. I will also provide a short overview of our recent efforts to obtain spectroscopic samples to train for photo-z algorithms using the Dark Energy Spectroscopic Instrument (DESI) [Ref: Dey et al 2022A, Dey et al. 2022B & Dey et al 2021] For Zoom information, please contact the seminar coordinators. PRB 4138 & Zoom America/New_York public

Speaker: Biprateep Dey (Pittsburgh)

Photometric Redshifts for Next Generation of Sky Surveys

Studies of cosmology, galaxy evolution, and astronomical transients with the next generation of imaging surveys (like LSST, Euclid, and Roman Observatories) are all critically dependent on estimates of galaxy redshifts from imaging data alone; the resulting measurements are called photometric redshifts or photo-z's. Traditional photo-z estimation methods use galaxy colors and magnitudes as inputs thereby throwing away the rich pixel-level information present in resolved images. Moreover, the uncertainty estimates produced by these methods are not statistically well defined. In this presentation, I will discuss new deep learning-based photo-z estimation methods that take images directly as inputs and provide state-of-the-art photo-z prediction accuracy while being interpretable and requiring less training data. In addition to that, I will talk about a statistical formalism to produce well-calibrated photo-z uncertainty estimates that are agnostic and employ minimal assumptions. I will also provide a short overview of our recent efforts to obtain spectroscopic samples to train for photo-z algorithms using the Dark Energy Spectroscopic Instrument (DESI) [Ref: Dey et al 2022ADey et al. 2022B & Dey et al 2021]

For Zoom information, please contact the seminar coordinators.

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