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Development of an Object Recognition and Location System Using the Microsoft KinectTM Sensor

  • Jose Figueroa
  • Luis Contreras
  • Abel Pacheco
  • Jesus Savage
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 7416)

Abstract

This paper presents the development of an object recognition and location system using the Microsoft KinectTM, an off-the-shelf sensor for videogames console Microsoft Xbox 360TM which is formed by a color camera and depth sensor. This sensor is capable of capturing color images and depth information from a scene. This vision system uses a) data fusion of both color camera and depth sensor to segment objects by distance; b) scale-invariant features to characterize and recognize objects; and c) camera’s internal parameters combined with depth information to locate objects relative to the camera point of view. The system will be used along with a robotic arm to grab objects.

Keywords

Keywords: Feature extraction Scale Invariant Feature Machine vision Object detection Pattern recognition 

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Copyright information

© Springer-Verlag Berlin Heidelberg 2012

Authors and Affiliations

  • Jose Figueroa
    • 1
  • Luis Contreras
    • 1
  • Abel Pacheco
    • 1
  • Jesus Savage
    • 1
  1. 1.Biorobotics Laboratory, Department of Electrical EngineeringUniversidad Nacional Autonoma de Mexico, UNAMMexico

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