Mr. Eyob Abera Deboch | Multi Modality Fusion | Best Researcher Award

Mr. Eyob Abera Deboch, Multi Modality Fusion, Best Researcher Award

Eyob Abera Deboch at Shenzhen Institute of Advanced Technology, China

Professional Profile

Summary:

Mr. Deboch Eyob Abera is a highly skilled computer vision researcher with over three years of project experience. He recently graduated with a master’s degree in Information and Communication Engineering from the University of Electronic Science and Technology of China, achieving a remarkable CGPA of 4/4. His research interests lie in artificial intelligence, machine learning, and deep learning, particularly focusing on image fusion, classification, segmentation, detection, and tracking.

👩‍🎓Education:

  • MSc in Information and Communication Engineering, University of Electronic Science and Technology of China (Sep 2021 – June 2023)
    • Thesis: “Research on Image Fusion with the Deep Learning Framework”
  • BEng in Electronic Information Engineering, University of Electronic Science and Technology of China (Sep 2017 – June 2021)
    • Thesis: “Image Fusion Algorithms based on Machine Learning”

 

Professional Experience:

  • Master’s Thesis (Summer 2022 – June 2023): Designed and implemented a deep learning model for infrared and visible image fusion under the guidance of Associate Prof. Qi Jin.
  • School Assistant (Fall 2021): Provided assistance to students in the School of Information and Communication Engineering, addressing inquiries and guiding students.
  • Bachelor Thesis (Spring 2021): Designed and Implemented Ensemble Network for Infrared and Visible image fusion under the supervision of Associate Prof. Wu Ruiqing.
  • Upwork Freelancer: Completed projects including ball height detection during volleyball shots and dataset preparation.

Research Interests:

  • Image fusion
  • Classification
  • Segmentation
  • Detection
  • Tracking
  • Machine learning and deep learning algorithms
  • Deep learning frameworks

Skills:

  • Programming: Proficient in Python, MATLAB, and C/C++
  • Platforms: Experienced with Windows, Linux (Debian, Ubuntu), Android, Arduino, and Raspberry Pi
  • Networking: Skilled in Routing & Switching
  • Deep Learning: Extensive experience with CNN, ResNet, Autoencoder, DenseNet, GAN, RNN, UNet, Ensemble learning, and transformer models
  • Frameworks: Proficient in TensorFlow, PyTorch, Keras, OpenCV, and Pandas

Publications Top Noted:

Paper Title: Multi-scale feature fusion for prediction of IDH1 mutations in glioma histopathological images
  • Authors: Liu, X.; Hu, W.; Diao, S.; Racoceanu, D.; Qin, W.
  • Journal: Computer Methods and Programs in Biomedicine
  • Year: 2024
Paper Title: A deep learning and image enhancement based pipeline for infrared and visible image fusion
  • Authors: Qi, J.; Abera, D.E.; Fanose, M.N.; Wang, L.; Cheng, J.
  • Journal: Neurocomputing
  • Year: 2024
  • Citations: 1
Paper Title: Automatic Image Contrast Enhancement Based on Reinforcement Learning
  • Authors: Abera, D.E.; Gerezgiher, T.S.; Jin, Q.; Mesfin, G.F.
  • Year: 2022