EE Seminar: Predictor-Aware Hyperspectral Image Compression for Resource-Constrained Space Systems
https://tau-ac-il.zoom.us/j/85926599498?pwd=vnDR92s4EWzuHAXcx5ZymMI7vtZrPS.1
Meeting ID: 859 2659 9498
Passcode: 165721
Electrical Engineering Systems ZOOM Seminar
Speaker: Dvir Jerbi
M.Sc. student under the supervision of Prof. Wasim Huleihel and Prof. Tamir Be
Monday, 25th March 2026, at 15:00
Predictor-Aware Hyperspectral Image Compression for Resource-Constrained Space Systems
Abstract
In this thesis, we study the problem of detecting multiple hidden submatrices in a large Gaussian random matrix when the planted signal is inhomogeneous across entries. Under the null hypothesis, the observed matrix has independent and identically distributed standard normal entries. Under the alternative, there exist several planted submatrices whose entries deviate from the background in one of two ways: in the mean-shift model, planted entries (templates) have nonzero and possibly varying means; in the variance-shift model, planted entries have inflated and possibly varying variances. We consider two placement regimes for the planted submatrices. In the first, the row and column index sets are arbitrary. Motivated by scientific applications, in the second regime the row and column indices are restricted to be consecutive. For both alternatives and both placement regimes, we analyze the statistical limits of detection by proving information-theoretic lower bounds and by designing algorithms that match these bounds up to logarithmic factors, for a wide family of templates.
-סמינר זה ייחשב כסמינר שמיעה לתלמידי תואר שני ושלישי-
This Seminar Is Considered A Hearing Seminar For Msc/Phd Students-
כדי לקבל קרדיט שמיעה יש לחתום שם מלא ומספר ת.ז. בצ'ט

