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Fuzzy pattern recognition method based on fuzzy n-cell number

A fuzzy pattern recognition and fuzzy technology, applied in the direction of character and pattern recognition, instruments, computer parts, etc., can solve the problems of deviation of recognition results, can not reflect the overall structure of multi-dimensional fuzzy numbers well, and achieve the effect of convenient calculation

Inactive Publication Date: 2019-05-21
HANGZHOU DIANZI UNIV
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0004] In order to solve the problem that each component of the fuzzy number mean only depends on its corresponding fuzzy number component, and has nothing to do with other components, and the fuzzy number mean cannot reflect the overall structure of the multi-dimensional fuzzy number well, so that there is a certain deviation in the recognition results. The present invention provides a fuzzy pattern recognition method based on fuzzy n-cell numbers, which can be based on the centroid value of fuzzy n-cell numbers and the corresponding distance measure in an uncertain or imprecise environment, and then use the minimum distance principle to Multi-channel uncertain digital information for pattern recognition

Method used

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  • Fuzzy pattern recognition method based on fuzzy n-cell number
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  • Fuzzy pattern recognition method based on fuzzy n-cell number

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Embodiment Construction

[0048] The examples of the present invention will be described in detail below in conjunction with the accompanying drawings.

[0049] According to this embodiment figure 1 The analysis process is based on the fuzzy n-cell number pattern recognition method, as follows:

[0050] Step 1: Obtain the observation data set of the target to be identified or the observation data set of l standard categories.

[0051] For each standard category O i (i=1,2,…,l), randomly select m i samples, and get m i Observations for samples:

[0052]

[0053] Suppose an area is covered by 3 different types of mulch: O 1 : Road; O 2 : Coniferous forest dominated by Korean pine; O 3 : birch forest. For the three coverings, select 10 (only 10 for simplicity, in practical applications, in order to obtain objective and reasonable results, more samples should be selected) samples, and use 4 bands (MSS-4, MSS-5, MSS-6, MSS-7):

[0054] Table 1

[0055]

[0056]

[0057] Table 2

[0058]...

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PUM

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Abstract

The invention discloses a fuzzy identification method based on a fuzzy ellipsoid book. The fuzzy identification method comprises the following steps: step 1, obtaining a to-be-identified target or observation data sets of l standard categories; Step 2, respectively calculating the mean value of each feature of the observation data set of the to-be-identified target and the standard category in thestep 1; and step 2, respectively calculating the mean value of each feature of the observation data set of the to-be-identified target and the standard category in the step 1. step 3, constructing afuzzy n-cell number in a standard category, and constructing fuzzy n-cell numbers of the to-be-identified target; step 4, respectively calculating centroids of the fuzzy n-cell number of the to-be-identified target and the fuzzy n-cell number in each standard category, calculating the Euclidean distance through the centroid of the to-be-identified target and the and the centroid of each standard category; step 5, according to the Euclidean distance value obtained in the step 4, judging the pattern classification of the to-be-identified target by using a minimum distance principle. According tothe invention, the fuzzy mode identification accuracy of the fuzzy object is improved.

Description

technical field [0001] The invention belongs to the field of fuzzy pattern recognition, in particular to a fuzzy pattern recognition method based on fuzzy n-cell numbers. Background technique [0002] Pattern recognition is a basic problem that is often encountered and dealt with in science, engineering, economy, society and even life. The mathematical form of this problem is to identify which standard class the target to be tested belongs to under the premise of artificially marking each standard class. At this time, it is necessary to formalize each object mathematically, and sometimes the formalization of the object has a fuzzy nature, and at this time, fuzzy mathematical methods must be used for recognition. [0003] For fuzzy pattern recognition with multi-factor uncertain information, triangular fuzzy numbers are often used to construct the membership function of multidimensional fuzzy numbers, and the measurement of pattern recognition is constructed around the conce...

Claims

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Application Information

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IPC IPC(8): G06K9/62
Inventor 王桂祥沈晨杰徐益峰
Owner HANGZHOU DIANZI UNIV
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