Andrei B. Utkin

Work place: INOV INESC INOVAÇÃO, Rua Alves Redol 9, 1000-029 Lisbon, Portugal and CEFEMA, IST, Universidade Te´cnica de Lisboa, Av. Rovisco Pais 1, 1049-001 Lisbon, Portugal

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Research Interests: Artificial Intelligence

Biography

Andrei B. Utkin was born in 1959 in Leningrad (now St. Petersburg), Russia. He received his Honour M.Sc. (1982) and Ph.D. (1986) degrees in Physics and Mathematics from Leningrad State University, Russia, and Equivalence to Ph.D. degree in Physics (2007) from Universidade Técnica de Lisboa, Portugal. Being a reviewer of more than 10 ISI journals and an author of more than 110 publications, he is currently a unit coordinator at INOV - INESC Inovação (Lisbon, Portugal). As a researcher, team coordinator, and primary investigator, he participated in about 20 national and international projects. His major fields of study include signal processing, artificial intelligence, lidar, laser induced fluorescence, spectroscopy and electromagnetics. Dr. Utkin is a Senior Member of IEEE and a member of Rozhdestvenskii Optical Society.

Author Articles
Evaluating Image Recognition Efficiency using a Self-Organizing Map

By Rui M. Ligeiro Andrei B. Utkin

DOI: https://doi.org/10.5815/ijigsp.2016.07.01, Pub. Date: 8 Jul. 2016

Recognition and classification of images is an extremely topical interdisciplinary area that covers image processing, computer graphics, artificial intelligence, computer vision, and pattern recognition, resulting in many applications based on contemporary mobile devices. Developing reliable recognition schemes is a difficult task to accomplish. It depends on many factors, such as illumination, acquisition quality and the database images, in particular, their diversity. In this paper we study how the data diversity affects decision making in image recognition, presenting a database driven classification-error predictor. The predictor is based on a hybrid approach that combines a self-organizing map together with a probabilistic logical assertion method. By means of a clustering approach, the model provides fast and efficient assessment of the image database heterogeneity and, as expected, indicates that such heterogeneity is of paramount importance for robust recognition. The practicality of the model is demonstrated using a set of image samples collected from a standard traffic sign database publicly available by the UK Department for Transport.

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