Vision Based
Vision-based research focuses on using computer vision and machine learning to interpret visual data for various applications. Current efforts concentrate on improving the accuracy and robustness of vision systems, particularly using deep learning architectures like convolutional neural networks and transformers, often incorporating techniques like self-supervised learning and vision-language models for enhanced performance and generalization. This field is crucial for advancements in autonomous driving, robotics, precision agriculture, and healthcare, enabling more efficient and intelligent systems across diverse sectors. The development of large, high-quality datasets and rigorous evaluation metrics are also key areas of ongoing research.
Papers
Image-based Artificial Intelligence empowered surrogate model and shape morpher for real-time blank shape optimisation in the hot stamping process
Haosu Zhou, Nan Li
AstroSLAM: Autonomous Monocular Navigation in the Vicinity of a Celestial Small Body -- Theory and Experiments
Mehregan Dor, Travis Driver, Kenneth Getzandanner, Panagiotis Tsiotras