TR2011-054

Data Driven Frequency Mapping for Computationally Scalable Object Detection


Abstract:

Nonlinear kernel Support Vector Machines achieve better generalizations, yet their training and evaluation speeds are prohibitively slow for real-time object detection tasks where the number of data points in training and the number of hypotheses to be tested in evaluation are in the order of millions. To accelerate the training and particularly testing of such nonlinear kernel machines, we map the input data onto a low-dimensional spectral (Fourier) feature space using a cosine transform, design a kernel that approximates the classification objective in a supervised setting, and apply a fast linear classifier instead of the conventional radial basis functions. We present a data driven hypotheses generation technique and a LogistBoost feature selection. Our experimental results demonstrate the computational improvements 20 100x while maintaining a high classification accuracy in comparison to SVM linear and radial kernel basis function classifiers.

 

  • Related News & Events

    •  AWARD    AVSS 2011 Best Paper Award
      Date: September 2, 2011
      Awarded to: Fatih Porikli and Huseyin Ozkan.
      Awarded for: "Data Driven Frequency Mapping for Computationally Scalable Object Detection"
      Awarded by: IEEE Advanced Video and Signal Based Surveillance (AVSS)
      Research Area: Machine Learning
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    •  NEWS    AVSS 2011: publication by MERL researchers and others
      Date: August 30, 2011
      Where: IEEE International Conference on Advanced Video and Signal Based Surveillance (AVSS)
      Research Area: Machine Learning
      Brief
      • The paper "Data Driven Frequency Mapping for Computationally Scalable Object Detection" by Porikli, F. and Ozkan, H. was presented at the IEEE International Conference on Advanced Video and Signal Based Surveillance (AVSS).
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