Blur invariants: A novel representation in the wavelet domain

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摘要

Blur invariants in the wavelet domain are proposed for the first time in this paper. Wavelet domain blur invariants take advantage of several benefits that this domain provides, i.e. different alternatives for wavelet function and analysis in different scales. It is not required to model the blur system in order to extract the invariants. It will be shown how the space domain blur invariants are a special case of the proposed invariants. It will also be explained how the proposed invariants would not have the null space that their special case in the spatial domain have which limits their discriminative power. The performance of these invariants will be demonstrated through experiments, and compared to its counterpart which is defined in the spatial domain.

论文关键词:Blur invariant moment,Direct analysis,Feature extraction,Wavelet transform

论文评审过程:Received 7 April 2010, Revised 21 June 2010, Accepted 15 July 2010, Available online 21 July 2010.

论文官网地址:https://doi.org/10.1016/j.patcog.2010.07.020