基于CNN的二维牛皮癣皮肤图像缩放自动分割

N. Kasthuri, R. Ramyea, D. Jeffrin, N. K. Chitrasena, K. Divveshwari
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引用次数: 0

摘要

在印度,超过3%至4%的人受到称为牛皮癣的慢性增生性疾病的影响。斑状皮疹、小鳞状斑点、皮肤开裂、瘙痒、灼烧或疼痛是牛皮癣的常见体征和症状。这些体征和症状因牛皮癣的类型而异。各种类型的银屑病有鼠疫型银屑病、甲型银屑病、点滴型银屑病、逆型银屑病、脓疱型和红皮病型银屑病。这些牛皮癣会影响皮肤,在某些情况下,真菌感染会引发这种疾病。为了评估牛皮癣的严重程度,使用了各种方法来监测治疗反应。本文采用主成分分析(PCA)和刚性变换对银屑病进行自动分割。卷积神经网络(CNN)由卷积层、ReLU激活层、最大池化层和全连接前馈网络组成,用于皮肤图像的分类。通过卷积运算从输入图像中提取特征图。这些特征映射被用来训练神经网络模型对图像进行分类。使用输入图像训练模型后计算模型的性能指标,模型性能随图像类型的不同而变化。确定准确性、特异性、敏感性、F1评分,寻找最佳模型进行评价。
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CNN Based Automatic Segmentation of Scaling in 2-D Psoriasis Skin Images
In India, over 3 to 4 % of people are affected by chronic proliferative disease known as Psoriasis. The patchy rashes, small scaling spots, cracked skin, itching, burning or soreness are the common signs and symptoms of psoriasis. These signs and symptoms vary depending on the type of psoriasis. The various types of psoriasis are plague psoriasis, nail psoriasis, Guttate psoriasis, inverse, pustular and erythrodermic psoriasis. These psoriasis affects the skin and, in some cases, the fungal infections will trigger the disease. To evaluate psoriasis severity, various methods are used to monitor the therapeutic response. In this paper, Principal Component Analysis (PCA) and rigid transformations are used for the automatic segmentation of psoriasis. Convolutional Neural Network (CNN) which comprises of convolutional layer, ReLU activation layer, max pooling layer and fully connected feed forward network are used for the classification of skin images. The feature map is extracted from the input images by convolution operation. These feature maps are obtained to train the neural network model to classify the images. The performance metric of the model is calculated after training the model with input images and the model performance varies depending on the type of images. The accuracy, specificity, sensitivity, F1 score are determined to find the best model for evaluation.
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