基于双线性CNN和软注意方法的智能皮肤癌早期诊断系统

A. Pundir, Md. Abul Ala Walid, P. Adivarekar, A. Gopi, V. Malathy, Dr. Kamlesh Singh
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引用次数: 1

摘要

皮肤癌正在成为西方世界的主要死亡原因。虽然日晒是皮肤癌发展的主要危险因素,但这种恶性肿瘤可以出现在身体皮肤的任何地方。如果及早发现,大多数皮肤癌病例都可以成功治疗。如果不及时发现和治疗,皮肤癌是致命的。新的工具使皮肤癌的第一阶段检测成为可能。活组织检查是皮肤癌诊断的官方方法。这是通过刮掉少量皮肤并将其送到实验室进行分析来完成的。这需要花费大量的精力和时间。建议的皮肤癌检测方法是利用BilinearCNN-SA在早期发现恶性痣。病人从中受益更多。诊断方法中的预处理步骤包括各种元素,如去噪、灰度转换和图像增强。一旦数据被清理,他们应用Otsu分割。ABCD规则用于特征提取。然后使用bilineearcnn - sa模型进行最终分类。与卷积神经网络和支持向量机模型相比,本文提出的方法效果很好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent System for Early Diagnosis of Skin Cancer using Bilinear CNN and Soft Attention Approach
Skin cancer is becoming the leading cause of death in the Western world. Although sun exposure is a major risk factor for the development of skin cancer, this malignant neoplasm can appear anywhere in the body’s skin. When detected early, most cases of skin cancer can be treated successfully. Skin cancer is fatal if not caught and treated quickly. New tools allow for the first-stage detection of skin cancer. The biopsies are the official method of skin cancer diagnosis. This is accomplished by scraping out a small amount of skin and sending it off to the lab for analysis. It takes a lot of effort and time. The suggested skin cancer detection method makes use of BilinearCNN-SA to identify malignant moles at an early stage. Patients benefit more from it. Preprocessing steps in the diagnostic approach include various elements like noise removal, grayscale conversion, and image enhancement. Once the data has been cleaned up, they apply Otsu segmentation. The ABCD Rule is used for feature extraction. The BilinearCNN-SA Model is then used to make the final classification. When compared to convolutional neural network and support vector machine models, the proposed method fares very well.
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