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Performance analysis of Convolutional Neural Network (CNN) based Cancerous Skin Lesion Detection System

机译:基于卷积神经网络(CNN)的癌性皮肤病变检测系统的性能分析

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This paper focuses on the classification of dermoscopic images to identify the type of Skin lesion whether it is benign or malignant. Dermoscopic images provide deep insight for the analysis of any type of skin lesion. Initially, a custom Convolutional Neural Network (CNN) model is developed to classify the images for lesion identification. This model is trained across different train-test split and 30% split of train data is found to produce better accuracy. To further improve the classification accuracy a Batch Normalized Convolutional Neural Network (BN-CNN) is proposed. The proposed solution consists of 6 layers of convolutional blocks with batch normalization followed by a fully connected layer that performs binary classification. The custom CNN model is similar to the proposed model with the absence of Batch normalization and presence of Dropout at Fully connected layer. Experimental results for the proposed model provided better accuracy of 89.30%. Final work includes analysis of the proposed model to identify the best tuning parameters.
机译:本文着重于皮肤镜图像的分类,以识别皮肤病变的类型是良性还是恶性的。皮肤镜图像为分析任何类型的皮肤病变提供了深刻的见解。最初,开发了定制的卷积神经网络(CNN)模型以对图像进行分类以识别病变。该模型在不同的火车测试拆分中进行训练,发现火车数据的30%拆分产生了更高的准确性。为了进一步提高分类精度,提出了一种批归一化卷积神经网络(BN-CNN)。所提出的解决方案包括6层具有批处理归一化的卷积块,然后是执行二进制分类的全连接层。定制的CNN模型与建议的模型相似,但缺少批处理规范化,并且在完全连接的层上没有Dropout。提出的模型的实验结果提供了89.30%的更好精度。最后的工作包括对建议模型的分析,以确定最佳调整参数。

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