A Novel CapsNet based Image Reconstruction and Regression Analysis
Author(s) -
Akey Sungheetha,
Rajesh Sharma R
Publication year - 2020
Publication title -
journal of innovative image processing
Language(s) - English
Resource type - Journals
ISSN - 2582-4252
DOI - 10.36548/jiip.2020.3.006
Subject(s) - computer science , decoding methods , pattern recognition (psychology) , artificial intelligence , feature (linguistics) , artificial neural network , regression , field (mathematics) , image (mathematics) , regression analysis , feature extraction , computation , orientation (vector space) , data mining , machine learning , algorithm , mathematics , statistics , linguistics , philosophy , pure mathematics , geometry
In the field of image processing, all types of computation models are almost evolved to solve the issues through encoded neurons. However, compared with decoding orientation and regression analysis, still the doors are open due to its complexity. At present technologies uses two steps such as, decoding the intermediate terms and reconstruction using decoded information. The performance in terms of regression analysis is lagging due to the decoded intermediate terms. Conventional neural network models perform better in feature classification and representation, though the performance is reduced while handling high level features. Considering these issues in image classification and regression, the proposed model is designed with capsule network as an innovative method which is suitable to handle high level features. The experimental results of the proposed model are compared with conventional neural network models such as BPNN and CNN to validate the superior performance. The proposed model achieves better retrieval efficiency of 95.4% which is much better than other neural network models.
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