Pattern Discrimination

Xin Cao

Abstract


This paper makes use of the preliminary analysis of the image, through its basic image features, to find the suitable model and algorithm. Using Matlab to process the image, and then using fuzzy clustering analysis, boundary matching model and other analysis, to achieve the purpose of solving the problem. In view of the first problem, the image is prepared for processing first, and the image is segmented in batches. Since the image given by the attachment is BMP form, we first use MATLAB to process the image given by the attachment, so that it is stored in the standard data storage format of Matlab. In view of problem two, we first define the submatrix by defining the search neutralization domain and the coverage domain, and then establish the boundary matching method model, and for the first time the left and right boundary of the matrix to be obtained and the left and right boundary of the obtained submatrix are matched.


Keywords


Image Batch Cropping; Transitive Closure Method; Boundary Matching Model

Full Text:

PDF

Included Database


References


Wu WH, Tao HM, Xiao MZ, Tang PW. Gray level co- occurrence matrix texture feature extraction algorithm [J]. The optimization and implementation of digital technology and applications, 2015 (6) : 124-126.

Li J, Yang YQ, Shen W, Li D, Zhou H. Based on gray level co-occurrence matrix of fabric texture research [J]. Journal of modern textile technology, 2013, 21 (3): 12-16.

Li XG. Research on Image-based outlier detection Algorithm of reconstructed point Cloud [D]. Yunnan Normal University, 2017.

Zhang L, Guo LY, Cong B. MATLAB Practical Tutorial [M]. Posts and Telecommunications Press:, 201405.315.




DOI: https://doi.org/10.18686/esta.v10i5.526

Refbacks

  • There are currently no refbacks.


Copyright (c) 2023 Xin Cao

Creative Commons License
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.