Mélanie Gaillochet

ProfilePicture_2023.jpg

Hi! I’m currently a Ph.D. candidate at ÉTS Montréal (Canada) working on computer vision for medical image analysis under the supervision of Prof. Hervé Lombaert and Prof. Christian Desrosiers.

My research aims to reduce the high costs of manually annotating data, a task burdensome but necessary when developing medical image segmentation algorithms.

To reduce the annotation effort required by segmentation algorithms, I have developped active learning methods to identify the most informative samples to annotate and use during training. I have also worked on automating vision foundation models via prompt learning, using only weak labels - much easier to obtain than pixel-wise annotations. Additionally, I am interested in improving the post-treatment of ambiguous predictions through interactive correction.

Interests

  • Computer Vision
  • Medical Image Analysis
  • Active Learning
  • Foundation Models

Selected publications

  1. Automating MedSAM by Learning Prompts with Weak Few-Shot Supervision
    Mélanie Gaillochet, Christian Desrosiers, and Hervé Lombaert
    In Foundation Models for Medical Artificial General Intelligence, 2024
  2. Prompt Learning with Bounding Box Constraints for Medical Image Segmentation
    Mélanie Gaillochet, Mehrdad Noori, Sahar Dastani, and 2 more authors
    IEEE Transactions on Biomedical Engineering, 2025
  3. Active Learning for Medical Image Segmentation with Stochastic Batches
    Mélanie Gaillochet, Christian Desrosiers, and Hervé Lombaert
    Medical Image Analysis, 2023