Dermatoscopy Using Multi-Layer Perceptron, Convolution Neural Network, and Capsule Network to Differentiate Malignant Melanoma From Benign Nevus

Shamik Tiwari
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引用次数: 18

Abstract

Epiluminescence microscopy, more simply, dermatoscopy, entails a process using imaging to examine skin lesions. Various sorts of skin ailments, for example, melanoma, may be differentiated via these skin images. With the adverse possibilities of malignant melanoma causing death, an early diagnosis of melanoma can impact on the survival, length, and quality of life of the affected victim. Image recognition-based detection of different tissue classes is significant to implementing computer-aided diagnosis via histological images. Conventional image recognition require handcrafted feature extraction before the application of machine learning. Today, deep learning is offering significant choices with the progression of artificial learning to defeat the complications of the handcrafted feature extraction methods. A deep learning-based approach for the recognition of melanoma via the Capsule network is proposed here. The novel approach is compared with a multi-layer perceptron and convolution network with the Capsule network model yielding the classification accuracy at 98.9%.
多层感知机、卷积神经网络和胶囊网络在皮肤镜下区分恶性黑色素瘤和良性痣的应用
脱毛显微镜,更简单地说,皮肤镜检查,需要一个过程使用成像检查皮肤病变。各种各样的皮肤疾病,例如黑色素瘤,可以通过这些皮肤图像来区分。由于恶性黑色素瘤有可能导致死亡,早期诊断黑色素瘤会影响患者的生存、寿命和生活质量。基于图像识别的组织分类检测对于实现组织图像的计算机辅助诊断具有重要意义。传统的图像识别需要在应用机器学习之前进行手工特征提取。如今,随着人工学习的发展,深度学习为克服手工特征提取方法的复杂性提供了重要的选择。本文提出了一种基于深度学习的方法,通过Capsule网络来识别黑色素瘤。将该方法与多层感知器和卷积网络进行了比较,得到了98.9%的分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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