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Skin lesion segmentation using convolutional neural networks with improved U-Net architecture

机译:具有改进U-NET架构的卷积神经网络的皮肤病变分割

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The location of skin lesions is of particular importance in the diagnosis and monitoring of skin disease. For this purpose, image segmentation could be used, for which various methods, algorithms and approaches have been proposed. Lately, many convolutional neural networks (CNN) with different architectures have been effectively employed for semantic image segmentation. In this paper, a CNN with improved U-Net architecture is introduced; this architecture is used for applying image segmentation to a dermatology image dataset including images of three different skin damage types. In the proposed method, the efficiency of the architecture is significantly improved by employing a pre-trained architecture in the encoding section and replacing some of the pooling layers. Various factors affecting the network such as the function of layers and their effects on network performance are investigated. Compared to existing CNN architectures, the proposed method attains higher stability and efficiency for the given dataset. For training data, %92 accuracy and for testing data %89 accuracy has been achieved.
机译:皮肤病变的位置在皮肤病的诊断和监测方面是特别重要的。为此目的,可以使用图像分割,为此,已经提出了各种方法,算法和方法。最近,许多具有不同架构的卷积神经网络(CNN)已经有效地用于语义图像分割。在本文中,介绍了具有改进的U-Net架构的CNN;该架构用于将图像分段应用于皮肤科图像数据集,包括三种不同皮肤损坏类型的图像。在所提出的方法中,通过在编码部分中采用预先训练的架构并替换一些汇集层来显着改善架构的效率。研究了影响网络的各种因素,例如层的功能及其对网络性能的影响。与现有的CNN架构相比,所提出的方法对给定数据集具有更高的稳定性和效率。对于培训数据,%92精度和测试数据%89的精度已经实现。

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