TR2011-041

In-vehicle Camera Traffic Sign Detection and Recognition


    •  Ruta, A., Porikli, F.M., Watanabe, S., Li, Y., "In-vehicle Camera Traffic Sign Detection and Recognition", Machine Vision and Applications, Vol. 22, No. 2, March 2011.
      BibTeX TR2011-041 PDF
      • @article{Ruta2011mar,
      • author = {Ruta, A. and Porikli, F.M. and Watanabe, S. and Li, Y.},
      • title = {In-vehicle Camera Traffic Sign Detection and Recognition},
      • journal = {Machine Vision and Applications},
      • year = 2011,
      • volume = 22,
      • number = 2,
      • month = mar,
      • url = {https://www.merl.com/publications/TR2011-041}
      • }
  • Research Areas:

    Artificial Intelligence, Computer Vision, Machine Learning

Abstract:

In this paper, we discuss theoretical foundations and a practical realization of a real-time traffic sign detection, tracking and recognition system operating on board of a vehicle. In the proposed framework, a generic detector refinement procedure based on mean shift clustering is introduced. This technique is shown to improve the detection accuracy and reduce the number of false positives for a broad class of object detectors for which a soft response's confidence can be sensibly estimated. The track of an already established candidate is maintained over time using an instance-specific tracking function that encodes the relationship between a unique feature representation of the target object and the affine distortions it is subject to. We show that this function can be learned on-the-fly via regression from random transformations applied to the image of the object in known pose. Secondly, we demonstrate its capability of reconstructing the full-face view of a sign from substantial view angles. In the recognition stage, a concept of class similarity measure learned from image pairs is discussed and its realization using SimBoost, a novel version of AdaBoost algorithm, is analyzed. Suitability of the proposed method for solving multi-class traffic sign classification problems is shown experimentally for different feature representations of an image. Overall performance of our system is evaluated based on a prototype C++ implementation. Illustrative output generated by this demo application is provided as a supplementary material attached to this paper.

 

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