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Jooyong Jang's Team Developed A 6DoF Head Pose Estimation Algorithm From A Single Image

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  • 2024-11-04
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·         Jooyong Jang's Research Team (Department of Electronic Communication Engineering) Develops

6DoF Head Pose Estimation Algorithm of Human Subjects in a Video from a Single Image

- Presented at ECCV, one of the world’s top academic conferences in artificial intelligence -

 

Professor Jooyong Jang’s research team in the Department of Electronic Communication Engineering has developed an algorithm that accurately estimates the 6-degree-of-freedom (6DoF) head pose of human subjects in a video from a single image.

 Jooyong Jang's Team Developed A 6DoF Head Pose Estimation Algorithm From A Single Image. 

Figure 1. Comparison of existing head pose estimation methods with the developed method (TRG)

 

The developed algorithm enables the acquisition of 3D location and 3D rotation information of the head from the image, which can be utilized in various applications such as augmented/virtual reality, metaverse, driver monitoring systems, and human-robot interaction. Existing methods have a unidirectional structure in which face geometry information is first acquired and then optimized with the image to estimate a 6Dof head pose. These methods have the drawback of being unable to correct head pose estimation errors if the face geometry information is inaccurately estimated. In contrast, the algorithm developed by this research team is designed with a bidirectional structure that iteratively refines face geometry information and head pose, overcoming the limitations of existing methods (see Figure 1).

 

 

 Jooyong Jang's Team Developed A 6DoF Head Pose Estimation Algorithm From A Single Image.
Figure 2. Examples of 6Dof head poses obtained using the developed method

 

 

The developed method achieved superior performance compared to existing state-of-the-art methods on various public datasets for face geometry restoration and head pose estimation, including ARKitFace and BIWI. Figure 2 shows examples of 6Dof head poses obtained using the developed method on in-the-wild images containing various human subjects.

 

Jooyong Jang's Team Developed A 6DoF Head Pose Estimation Algorithm From A Single Image.
 

Figure 3. PhD student Sungho Jeon presenting at ECCV

 

The research was funded by the Ministry of Science and ICT through the Core Technology Development Project for Realistic Contents (RS-2023-00219700) and Basic Research (NRF-2022R1F1A1066170) and was presented at the European Conference on Computer Vision (ECCV) in Milan, Italy, in early October (see Figure 3). Since 1990, ECCV has been held biennially and is regarded, alongside CVPR and ICCV, as one of the most prestigious conferences not only in the field of computer vision but also in the broader field of artificial intelligence. ECCV has an H5-index of 206 on Google Scholar, making it one of the highest-ranking international conferences in the fields of engineering and computer science. A total of 8,585 papers were submitted to ECCV 2024, of which 2,395 were accepted, resulting in a low acceptance rate of approximately 27.9%.

 

Link to paper: https://www.ecva.net/papers/eccv_2024/papers_ECCV/html/4824_ECCV_2024_paper.php

https://www.kw.ac.kr/ko/life/research.jsp?BoardMode=view&DUID=48043&tpage=1&searchKey=1&searchVal=&srCategoryId=?