We propose a stereo vision based obstacle detection and scene segmentation algorithm appropriate for autonomous vehicles. Our algorithm is based on an innovative extension of the Stixel world, which neglects computing a disparity map. Ground plane and stixel distance estimation is improved by exploiting an online learned color model. Furthermore, the stixel height estimation is leveraged by an innovative joined membership scheme based on color and disparity information. Stixels are then used as an input for the semantic scene segmentation providing scene understanding, which can be further used as a comprehensive middle level representation for high-level object detectors
Abstract. This paper presents a stereo vision-based scene model for traffic scenarios. Our approach ...
Autonomous driving has been one of the most challenging and exciting research topics in the last ye...
Computer vision plays a central role in autonomous vehicle technology, because cameras are comparabl...
We propose a stereo vision based obstacle detection and scene segmentation algorithm appropriate for...
There has been an increasing demand for autonomous driving system in the past decades of studies and...
This work concentrates on vision processing for ADAS and intelligent vehicle applications. We propos...
This work concentrates on vision processing for ADAS and intelligent vehicle applications. We propos...
This work concentrates on vision processing for ADAS and intelligent vehicle applications. We propos...
This work concentrates on vision processing for ADAS and intelligent vehicle applications. We propos...
This work concentrates on vision processing for ADAS and intelligent vehicle applications. We propos...
Already today modern driver assistance systems contribute more and more to make individual mobility ...
In this paper, we present our work towards scene understanding based on modeling the scene prior to ...
In this paper, we present our work towards scene understanding based on modeling the scene prior to...
Powerful environment perception systems are a fundamental prerequisite for the successful deployment...
This work contributes to vision processing for intelligent vehicle applications with an emphasis on ...
Abstract. This paper presents a stereo vision-based scene model for traffic scenarios. Our approach ...
Autonomous driving has been one of the most challenging and exciting research topics in the last ye...
Computer vision plays a central role in autonomous vehicle technology, because cameras are comparabl...
We propose a stereo vision based obstacle detection and scene segmentation algorithm appropriate for...
There has been an increasing demand for autonomous driving system in the past decades of studies and...
This work concentrates on vision processing for ADAS and intelligent vehicle applications. We propos...
This work concentrates on vision processing for ADAS and intelligent vehicle applications. We propos...
This work concentrates on vision processing for ADAS and intelligent vehicle applications. We propos...
This work concentrates on vision processing for ADAS and intelligent vehicle applications. We propos...
This work concentrates on vision processing for ADAS and intelligent vehicle applications. We propos...
Already today modern driver assistance systems contribute more and more to make individual mobility ...
In this paper, we present our work towards scene understanding based on modeling the scene prior to ...
In this paper, we present our work towards scene understanding based on modeling the scene prior to...
Powerful environment perception systems are a fundamental prerequisite for the successful deployment...
This work contributes to vision processing for intelligent vehicle applications with an emphasis on ...
Abstract. This paper presents a stereo vision-based scene model for traffic scenarios. Our approach ...
Autonomous driving has been one of the most challenging and exciting research topics in the last ye...
Computer vision plays a central role in autonomous vehicle technology, because cameras are comparabl...