Table Tennis
Table tennis research currently focuses on developing robotic systems capable of playing the game at a human-competitive level, achieving this through advancements in computer vision, robotic control, and machine learning. Key research areas include accurate ball trajectory prediction (often incorporating physical models and neural networks), real-time spin estimation using diverse sensor modalities (including event cameras), and robust stroke detection and classification from video data. These advancements have implications for both robotics (e.g., improving dexterity and real-time decision-making in dynamic environments) and sports analytics (e.g., enabling objective performance evaluation and training tools).
Papers
Two Stream Network for Stroke Detection in Table Tennis
Anam Zahra, Pierre-Etienne Martin
Sports Video: Fine-Grained Action Detection and Classification of Table Tennis Strokes from Videos for MediaEval 2021
Pierre-Etienne Martin, Jordan Calandre, Boris Mansencal, Jenny Benois-Pineau, Renaud Péteri, Laurent Mascarilla, Julien Morlier