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Tecnia
versión impresa ISSN 0375-7765versión On-line ISSN 2309-0413
Resumen
DIAZ SALAZAR, Aldo A y KURKA, Paulo R. G.. Computer vision methods for automotive applications. Tecnia [online]. 2020, vol.30, n.2, pp.74-81. ISSN 0375-7765. http://dx.doi.org/10.21754/tecnia.v30i2.801.
Recent advances in computer vision are leveraging many technological developments in modern industry and automation. In this tutorial, it is presented a review of computer vision methods and applications relevant to the use of cameras as measurement devices in the automotive industry and robotics. The methods include algorithms for edge and ellipse detection, camera calibration, 3-D reconstruction and stereo vision. The applications are elaborated through simulations of three key problems: Detection of rims in automotive wheels; estimation of the calibration angles of vehicles and; trajectory reconstruction using stereo vision. These applications allow to demonstrate the potential of vision-based technologies in solving complex engineering problems in an automated fashion using cameras as sensors. As a result, three general purpose methodologies are proposed for solving problems of industrial need that would serve as guidelines for further developments in current and other related areas.
Palabras clave : Computer vision; wheel rim detection; vehicle calibration angles; stereo odometry.