4.1 Article

The Image Classification Method with CNN-XGBoost Model Based on Adaptive Particle Swarm Optimization

期刊

INFORMATION
卷 12, 期 4, 页码 -

出版社

MDPI
DOI: 10.3390/info12040156

关键词

figure classification; binary classification; hyper-parameters optimization; credit scoring

资金

  1. National Natural Science Foundation of China [61972227, 61873117, U1609218]
  2. Natural Science Foundation of Shandong Province [ZR201808160102, ZR2019MF051]
  3. Primary Research and Development Plan of Shandong Province [GG201710090122, 2017GGX10109, 2018GGX101013]
  4. Fostering Project of Dominant Discipline and Talent Team of Shandong Province Higher Education Institutions

向作者/读者索取更多资源

The CNN-XGBoost image classification model, optimized by APSO algorithm, has improved the accuracy of image classification. Divided into feature extraction and feature classification, the model performs well.
CNN is particularly effective in extracting spatial features. However, the single-layer classifier constructed by activation function in CNN is easily interfered by image noise, resulting in reduced classification accuracy. To solve the problem, the advanced ensemble model XGBoost is used to overcome the deficiency of a single classifier to classify image features. To further distinguish the extracted image features, a CNN-XGBoost image classification model optimized by APSO is proposed, where APSO optimizes the hyper-parameters on the overall architecture to promote the fusion of the two-stage model. The model is mainly composed of two parts: feature extractor CNN, which is used to automatically extract spatial features from images; feature classifier XGBoost is applied to classify features extracted after convolution. In the process of parameter optimization, to overcome the shortcoming that traditional PSO algorithm easily falls into a local optimal, the improved APSO guide the particles to search for optimization in space by two different strategies, which improves the diversity of particle population and prevents the algorithm from becoming trapped in local optima. The results on the image set show that the proposed model gets better results in image classification. Moreover, the APSO-XGBoost model performs well on the credit data, which indicates that the model has a good ability of credit scoring.

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