2D and 3D Image Analysis by Gaussian Hermite Moments
نویسندگان
چکیده
This chapter introduces 2D and 3D GaussianHermite moments and rotation invari-ants constructed from them. Thanks to their numerical stability, GaussianHermite moments provide better reconstruction and recognition power than the geometric and most of other orthogonal moments while keeping the simplicity of design of the invari-ants. This is illustrated by experiments on real 2D and 3D data. 7.1 Introduction Although moments have been used in many image analysis tasks and areas, probably their most important and most frequent application is in object recognition. The key
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تاریخ انتشار 2014