数据增强对使用深度学习的皮肤病变分类的影响

V. O. Nancy, Meenakshi S. Arya, N. Nitin
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引用次数: 1

摘要

已知的特殊类型的癌症类型是黑色素瘤。它以色素的形式出现,在初始阶段很难找到。在早期阶段确定时,持久性级别为99%。皮肤病变中恶性肿瘤的分类和鉴别至关重要。主要目标是使用深度学习技术将病变图像分类为七个重要类别,并尽早识别癌性和非癌性肿瘤。获得深度学习结果的有效方法是使用大量高质量的训练数据集。现有的数据集不足以有效地训练模型。数据增强技术是利用不足数据构建高度精确分类器的有效方法。该方法提出了一种有效的恶性肿瘤诊断策略,即基于cnn的模型。CNN是专门用于图像识别和分类的。该框架使用已标记为适当类的数据进行训练。用增强和非增强病变图像训练了一个类似的框架,用于识别恶性病变。结果与原始数据和增强数据进行了比较。经模型评估,增强数据的准确率为97.86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Data Augmentation on Skin Lesion Classification Using Deep Learning
The known peculiar type of cancer type is melanoma. It arises as pigment and is hard to find in the initial stages. The persistence level is 99% when identified in the early stage. Classification and identification of malignant tumors in skin lesions are crucial. The main goal is to sort the lesion images to seven important classes and identify the cancerous and non-cancerous tumors at the earliest using deep learning techniques. The efficient way for deep learning outcomes is to use a large volume and high-quality training dataset. Existing datasets are effectively not sufficient for training the model. The techniques for data augmentation are effective ways to build highly accurate classifiers from insufficient data. The proposed methodology offered the effective strategy for diagnosing the malignant tumor is a CNN-based model. CNN is specifically used to recognize and classify images. The framework is trained with data that has been labeled with the appropriate class. A similar framework has been trained with augmented and non-augmented lesion images for knowing the malignant lesions. The results are compared to both original data and augmented data. The model evaluated, the accuracy occurred for augmented data is 97.86%.
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