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Tangent Vectors and Local Representations
Combination of Tangent Vectors and Local
Representations for Handwritten Digit Recognition
Keysers, Paredes, Ney, Vidal
Daniel Keysers (RWTH Aachen),
Roberto Paredes (ITI, UP Valencia),
Hermann Ney (RWTH Aachen),
Enrique Vidal (ITI, UP Valencia)
Combination of Tangent Vectors
and Local
Representations for
Handwritten Digit Recognition
Daniel Keysers, Roberto Paredes, Hermann Ney, and Enrique Vidal
Abstract:
Statistical classification using tangent vectors and classification
based on local features are two successful methods for various image
recognition problems. These two approaches tolerate global and
local transformations of the images, respectively. Tangent vectors
can be used to obtain global invariance with respect to small affine
transformations and line thickness, for example. On the other hand,
a classifier based on local representations admits the distortion of
parts of the image. From these properties, a combination of the two
approaches seems very likely to improve on the results of the
individual approaches. In this paper, we show the benefits of this
combination by applying it to the well known USPS handwritten digits
recognition task. An error rate of 2.0% is obtained, which is the
best result published so far for this dataset.
Next: Introduction
Daniel Keysers
2002-10-15