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Multiclass Stomach Diseases Classification Using Deep Learning Features Optimization

Authors
Khan, Muhammad AttiqueMajid, AbdulHussain, NazarAlhaisoni, MajedZhang, Yu-DongKadry, SeifedineNam, Yunyoung
Issue Date
2021
Publisher
Tech Science Press
Keywords
Stomach infections; deep features; features optimization; fusion; classification
Citation
Computers, Materials and Continua, v.67, no.3, pp 3381 - 3399
Pages
19
Journal Title
Computers, Materials and Continua
Volume
67
Number
3
Start Page
3381
End Page
3399
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/2201
DOI
10.32604/cmc.2021.014983
ISSN
1546-2218
1546-2226
Abstract
In the area of medical image processing, stomach cancer is one of the most important cancers which need to be diagnose at the early stage. In this paper, an optimized deep learning method is presented for multiple stomach disease classification. The proposed method work in few important steps-preprocessing using the fusion of filtering images along with Ant Colony Optimization (ACO), deep transfer learning-based features extraction, optimization of deep extracted features using nature-inspired algorithms, and finally fusion of optimal vectors and classification using Multi-Layered Perceptron Neural Network (MLNN). In the feature extraction step, pre trained Inception V3 is utilized and retrained on selected stomach infection classes using the deep transfer learning step. Later on, the activation function is applied to Global Average Pool (GAP) for feature extraction. However, the extracted features are optimized through two different nature-inspired algorithms-Particle Swarm Optimization (PSO) with dynamic fitness function and Crow Search Algorithm (CSA). Hence, both methods' output is fused by a maximal value approach and classified the fused feature vector by MLNN. Two datasets are used to evaluate the proposed method-CUI WahStomach Diseases and Combined dataset and achieved an average accuracy of 99.5%. The comparison with existing techniques, it is shown that the proposed method shows significant performance.
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