Dr Maxim (Maksym) Ivashechkin
Postgraduate Research Student
About
My research project
3D Human Pose Estimation from Images3D reconstruction from 2D observations is a highly challenging area in computer vision, primarily due to ambiguities such as scale, depth, occlusions, etc. My work leverages deep learning techniques for 3D reconstruction, incorporating parametric human models to enhance estimation accuracy. To address the challenges posed by this inherently ill-posed problem, various constraints and regularizations are applied. The focus is on the domain of sign language, where capturing intricate articulations and detailed facial expressions is crucial. The pipeline involves detecting features in 2D, reconstructing the 3D model, and rendering it back into the image space.
Supervisors
3D reconstruction from 2D observations is a highly challenging area in computer vision, primarily due to ambiguities such as scale, depth, occlusions, etc. My work leverages deep learning techniques for 3D reconstruction, incorporating parametric human models to enhance estimation accuracy. To address the challenges posed by this inherently ill-posed problem, various constraints and regularizations are applied. The focus is on the domain of sign language, where capturing intricate articulations and detailed facial expressions is crucial. The pipeline involves detecting features in 2D, reconstructing the 3D model, and rendering it back into the image space.
Publications
Maksym Ivashechkin, Daniel Barath, Jiri Matas (2020)
Daniel Barath, Jana Noskova, Maksym Ivashechkin, Jiri Matas (2020)
Maksym Ivashechkin, Daniel Barath, Jiri Matas (2021)
Maksym Ivashechkin, Oscar Mendez, Richard Bowden (2023)
Maksym Ivashechkin, Oscar Mendez, Richard Bowden (2023)
Maksym Ivashechkin, Oscar Mendez, Richard Bowden (2024)
Daniel Barath, Maksym Ivashechkin, Jiri Matas (2020)