IEEE 6th International Conference Engineering & Telecommunication – En&T-2019
Improvement of the quality of pattern recognition method in conditions of a deficient amount of labeled experimental data
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Method of preparing the composite training dataset:
- review of typical manufacturing causes of defect patterns;
- procedure of synthesized wafe maps creation;
- adaptive configuration of training dataset.
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New learning DCNN strategy:
- pretrain stage on pure synthetic dataset;
- main train stage on composite dataset.
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Numerical calculations and results:
- DCNN model training: VGG-19, ResNet-50, ResNet-34 and MobileNetV2;
- experimental comparison of models accuracy on different conditions;
- dependence of classification accuracy on amount of experimental data.
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Proposal of the method of preparing the composite training dataset
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Development of the new learning DCNN model strategy which improve the final result of accuracy by 1% up to 4%
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Experimental accuracy comparison of VGG-19, ResNet-50, ResNet-34 and MobileNetV2 DCNN models for the different ratio of experimental labeled data to synthesized data
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Achievement of 87.8% final classification accuracy with Rₗₛ = 0.05 on the public dataset WM-811K by ResNet-50
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Formative evaluation of needed amount of experimental data to obtain required accuracy