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Doctoral Student for Machine Vision and Signal Analysis |
The North changes the world – more sustainable, more intelligent, more humane. We, at the University of Oulu, work as part of the international science community to produce new scientific information and science-based solutions. We are committed to educate future pioneers to build a more sustainable, intelligent and humane world. Creating new, taking responsibility and succeeding together are values that build a strong foundation for all our actions. We offer a working environment where individuals can cultivate their skills, do meaningful work, and develop professionally. Our university's several specialized research and service units enable extensive and diverse development and career opportunities for experts in various fields.
Related to this position, University of Oulu possesses strong expertise in artificial intelligence, wireless communications engineering, medicine, Humanities, and business, and close cooperation with various research institutes and companies, which has created an internationally significant research and innovation hub that is changing the world and securing our well-being. Applications are invited for a Doctoral Student position to join a research project headed by Professor Guoying Zhao in the Center for Machine Vision and Signal Analysis Research Unit (CMVS, http://www.oulu.fi/cmvs), to work on 1) Spontaneous facial expression analysis, or 2) Remote physiological signal measure from video analysis, or 3) Multi-modal learning. The duration of the position is one year and the expected starting time for the work is September 2021 or as soon as possible thereafter. A six-month trial period is applied in the position.
Subject field and description of the position Successful applicant would work in the field of computer vision and machine learning, carrying out the following tasks: 1) study the courses related to the subject field; 2) develop new algorithms and program to implement different methods, for solving problems in face analysis or general neural network learning (depending on what project the candidate would participate); 3) analyze the experimental results, be able to find out the problems and adjust to new solutions; 4) collaborate with other team members working in the same projects or same subject; 5) write research papers and technical reports.
About CMVS CMVS (http://www.oulu.fi/cmvs) provides an inspiring and international research environment. CMVS is renowned world-wide for its scientific breakthroughs in machine vision and signal analysis. Many of its results, including the Local Binary Pattern, face analysis and geometric camera calibration methodologies, are highly cited and have been adopted for different types of problems and applications around the world. The unit is internationally attractive, with one visiting FiDiPro Professor and one Fellow, several visiting scholars and an extensive international collaboration network, enabling a large number of joint publications in leading forums. The main research interests of CMVS are in computer vision and machine learning, affective computing, multimodal image and signal analysis, low-energy computing, and applications in affective human-computer interaction, biometrics, augmented reality, and biomedicine. In physiological signal analysis basic, applied and translational research in biomedical engineering is carried out to tackle key challenges of next generation personalized medicine and wellness solutions. In its field the Research Unit is globally highly ranked with research activities based on international collaborations. The partners of CMVS include three institutes of Chinese Academy of Sciences (Computing Technology, Psychology, and Automation), National University of Singapore, University of Georgia (USA), Imperial College London, Czech Technical University (Prague), University of Maryland (USA), Idiap Research Institute (Switzerland), and EPFL (Switzerland). At the University of Oulu the Research Unit and its leading experts are responsible for undergraduate, graduate, and post-doctoral education in the field.
Required qualifications and assessment A successful candidate for the Doctoral Student position must hold a Master`s degree in computer science or electrical engineering with previous experience and publications on computer vision or a related area. Also, good knowledge of spoken and written English is required and strong mathematical and programming skills with C/C++/Matlab/python are respected.
Salary and benefits
Application procedure Applications, together with all relevant enclosures, must be submitted using the electronic application form by April 15, 2021 at 23:59 (Finnish local time). The following documents must be attached to the application (to be submitted in English):
For further information, please contact Professor Guoying Zhao Center for Machine Vision and Signal Analysis Research Faculty of Information Technology and Electrical Engineering Tel: +358 294 487564 Email: guoying.zhao@oulu.fi |
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