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Kybernetika 34(4):411-416, 1998.

On Selecting the Best Features in a Noisy Environment.

Jan Flusser and Tomáš Suk


Abstract:

This paper introduces a novel method for selecting a feature subset yielding an optimal trade-off between class separability and feature space dimensionality. We assume the following feature properties: (a) the features are ordered into a sequence, (b) robustness of the features decreases with an increasing order and (c) higher-order features supply more detailed information about the objects. We present a general algorithm how to find under those assumptions the optimal feature subset. Its performance is demonstrated experimentally in the space of moment-based descriptors of 1-D signals, which are invariant to linear filtering.


AMS: 62H;


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BIB TeX

@article{kyb:1998:4:411-416,

author = {Flusser, Jan and Suk, Tom\'{a}\v{s}},

title = {On Selecting the Best Features in a Noisy Environment.},

journal = {Kybernetika},

volume = {34},

year = {1998},

number = {4},

pages = {411-416}

publisher = {{\'U}TIA, AV {\v C}R, Prague },

}


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