Author :
Kim, Dae-Nyeon ; Trinh, Hoang-Hon ; Jo, Kang-Hyun
Abstract :
This paper proposes a method segments the object from an image taken by moving robot in outdoor environment. We show the method of segmentation based on low-level features using multiple cues. Multiple local cues are color, straight line, edge, context information. hue co-occurrence matrix (HCM), principal components (PCs) and vanishing point (VP). Model the objects of outdoor environment that define their characteristics individually. We classify the object into natural and artificial ones. We detect sky and tree of natural object and building of artificial object. We segment the region as mixture using the proposed features and methods. Objects can be detected when we combine predefined multiple cues. In this paper, we segment region of sky, tree and building. We use features of color, edge, context information to extract of sky. Tree region use the features of color, edge, context information and HCM. We use to extract building using color, straight line, PCs, edge and vanishing point. Finally, we confirm the result of region segmentation using multiple cues on outdoor environment.
Keywords :
image segmentation; matrix algebra; mobile robots; navigation; object detection; principal component analysis; robot vision; hue cooccurrence matrix; multiple cues; object detection; outdoor environment; principal components; regions segmentation; robot navigation; sky detection; vanishing point; Colored noise; Data mining; Feature extraction; Image color analysis; Image segmentation; Navigation; Object detection; Robotics and automation; Robots; Shape; Region segmentation; multiple cues; outdoor environment; robot navigation;