My research lies at the intersection of computational mathematics and machine learning for applications to large-scale real world problems. My central research is to develop new data-driven algorithmic techniques that allow computers to gain high-level understanding from vast amounts of data, this, with the aim of aiding the decisions of users. These methods are based on mathematical modelling and machine learning methods.
Keywords: Applied Mathematics Computational Mathematics Inverse problems Image Analysis Graph Learning Machine Learning.
Publications
Sensory Substitution for Force Feedback Recovery
– ACM Transactions on Applied Perception
(2018)
15,
1
(doi: 10.1145/3176642)
Sliding to Predict: Vision-Based Beating Heart Motion Estimation by Modeling Temporal Interactions
– International journal of computer assisted radiology and surgery
(2018)
13,
353
(doi: 10.1007/s11548-018-1702-1)
Peekaboo-Where are the Objects? Structure Adjusting Superpixels
– 2018 25TH IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP)
(2018)
00,
3693
(doi: 10.1109/ICIP.2018.8451822)
Robust cardiac motion estimation using ultrafast ultrasound data: a low-rank topology-preserving approach.
– Phys Med Biol
(2017)
62,
4831
(doi: 10.1088/1361-6560/aa6914)
Towards Retrieving Force Feedback in Robotic-Assisted Surgery: A Supervised Neuro-Recurrent-Vision Approach
– IEEE Trans Haptics
(2016)
10,
431
(doi: 10.1109/toh.2016.2640289)
- <
- 5 of 5