Deep Learning–Based Skin Lesion Multi-class Classification with Global Average Pooling Improvement

被引:0
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作者
Paravatham V. S. P. Raghavendra
C. Charitha
K. Ghousiya Begum
V. B. S. Prasath
机构
[1] SASTRA Deemed to be University,School of Mechanical Engineering
[2] SASTRA Deemed to be University,School of Electrical and Electronics Engineering
[3] Cincinnati Children’s Hospital Medical Center,Division of Biomedical Informatics
[4] University of Cincinnati,Department of Pediatrics, College of Medicine
[5] University of Cincinnati,Department of Biomedical Informatics, College of Medicine
[6] University of Cincinnati,Department of Computer Science
关键词
Deep learning; Skin cancer; HAM10000; Deep Convolution Neural Network (DCNN); Prediction; GUI;
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中图分类号
学科分类号
摘要
Cancerous skin lesions are one of the deadliest diseases that have the ability in spreading across other body parts and organs. Conventionally, visual inspection and biopsy methods are widely used to detect skin cancers. However, these methods have some drawbacks, and the prediction is not highly accurate. This is where a dependable automatic recognition system for skin cancers comes into play. With the extensive usage of deep learning in various aspects of medical health, a novel computer-aided dermatologist tool has been suggested for the accurate identification and classification of skin lesions by deploying a novel deep convolutional neural network (DCNN) model that incorporates global average pooling along with preprocessing to discern the skin lesions. The proposed model is trained and tested on the HAM10000 dataset, which contains seven different classes of skin lesions as target classes. The black hat filtering technique has been applied to remove artifacts in the preprocessing stage along with the resampling techniques to balance the data. The performance of the proposed model is evaluated by comparing it with some of the transfer learning models such as ResNet50, VGG-16, MobileNetV2, and DenseNet121. The proposed model provides an accuracy of 97.20%, which is the highest among the previous state-of-art models for multi-class skin lesion classification. The efficacy of the proposed model is also validated by visualizing the results obtained using a graphical user interface (GUI).
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页码:2227 / 2248
页数:21
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