논문 상세보기

사전위치정보를 이용한 도심 영상의 의미론적 분할 KCI 등재

Semantic Segmentation of Urban Scenes Using Location Prior Information

  • 언어KOR
  • URLhttps://db.koreascholar.com/Article/Detail/331418
서비스가 종료되어 열람이 제한될 수 있습니다.
로봇학회논문지 (The Journal of Korea Robotics Society)
한국로봇학회 (Korea Robotics Society)
초록

This paper proposes a method to segment urban scenes semantically based on location prior information. Since major scene elements in urban environments such as roads, buildings, and vehicles are often located at specific locations, using the location prior information of these elements can improve the segmentation performance. The location priors are defined in special 2D coordinates, referred to as road-normal coordinates, which are perpendicular to the orientation of the road. With the help of depth information to each element, all the possible pixels in the image are projected into these coordinates and the learned prior information is applied to those pixels. The proposed location prior can be modeled by defining a unary potential of a conditional random field (CRF) as a sum of two sub-potentials: an appearance feature-based potential and a location potential. The proposed method was validated using publicly available KITTI dataset, which has urban images and corresponding 3D depth measurements.

저자
  • 왕정현(Robotics Program, KAIST) | Jeonghyeon Wang
  • 김진환(Department of Mechanical Engineering, and Robotics Program, KAIST) | Jinwhan Kim Corresponding author