TH2.SC2.4
          Generating synthetic data to train a deep unrolled network for Hyperspectral Unmixing
Rassim Hadjeres, Christophe Kervazo, Florence Tupin, Télécom Paris, France
              Session:
                TH2.SC2: Applications of Machine Learning  Lecture
              Track:
                SiG-DML - Signal and Data Analytics for Machine Learning
              Location:
                Saint Clair 2
              Presentation Time:
                Thu, 29 Aug, 15:00 - 15:20 France Time (UTC +1)
              Session Co-Chairs:
Sundeep Prabhakar Chepuri, Indian Institute of Science and Pierre Borgnat, CNRS, ENS de Lyon
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                  Discussion
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            Session TH2.SC2
            TH2.SC2.1: Deep Learning-Based ON/OFF Detection for Enhanced Energy Disaggregation
  Nidhal BALTI, Baptiste VRIGNEAU, Pascal SCALART, Univ of Rennes, France
  TH2.SC2.2: Generalized FDIA Detection in Power Dependent Electrified Transportation Systems
  Shahriar Rahman Fahim, Rachad Atat, Cihat Kececi, Texas A&M University, United States; Abdulrahman Takiddin, Florida State University, United States; Muhammad Ismail, Tennessee Tech University, United States; Katherine R. Davis, Erchin Serpedin, Texas A&M University, United States
  TH2.SC2.3: WAVEFIELD MAE: LEVERAGING LARGE VISION MODELS FOR ULTRASONIC WAVEFIELD PATTERN ANALYSIS
  Jiaxing YE, Takumi Kobayashi, Nobuyuki Toyama, National Institute of Advanced Industrial Science and Technology, Japan, Japan
  TH2.SC2.4: Generating synthetic data to train a deep unrolled network for Hyperspectral Unmixing
  Rassim Hadjeres, Christophe Kervazo, Florence Tupin, Télécom Paris, France
  TH2.SC2.5: SINGLE GATE SPIKING RECURRENT NEURAL NETWORK FOR HISTOGRAM-LESS SINGLE-PHOTON DEPTH SENSING
  Yijie Miao, Makoto Ikeda, The University of Tokyo, Japan