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FESTO: A Robust Object Recognition and Pose Estimation System for Robotic Applications




Project NumberACF02-00094

Project LeaderAytul Ercil
Project SupervisorAytul Ercil
Project Team
  • Aytul Ercil
  • Gulbin Akgun
  • Hakan Buyukbayrak
Supporting Organizations

ContactGulbin Akgun Send e-mail

Start Date2001
End Date2003
StatusCompleted
Project Description
The aim of the project is rapid and accurate identification of 2-D objects and pose estimation. The system is robust in the sense that it is resilient to some problematic environment influences such as noise caused by image acquisiton hardware, changes in light and position (rotation & translation invariance) of an object on conveyor belt.

The object recognition system is composed of three main units:
- Image preprocessing unit
- Feature extraction unit
- Classification unit

Image preprocessing unit includes filtering operation to reduce noise, image segmentation by thresholding, morphological operations and contour extraction. The feature extraction module developed in the project is designed to include various techniques. The current techniques included in the software are implicit polynomial models, Fourier descriptors, moment invariants and eigenspace representation. The features found by the feature extraction module are stored in a database for each object.

In the classification unit, the feature vector of the object to be recognised is compared to the records in the database. The object is identified as the nearest object in the database.

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