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Simplification of neural networks for skin lesion image segmentation using color channel pruning

机译:使用颜色通道修剪简化皮肤病变图像分割的神经网络

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Automatic analysis of skin abnormality is an effective way for medical experts to facilitate diagnosis procedures and improve their capabilities. Efficient and accurate methods for analysis of the skin abnormalities such as convolutional neural networks (CNNs) are typically complex. Hence, the implementation of such complex structures in portable medical instruments is not feasible due to power and resource limitations. CNNs can extract features from the skin abnormality images automatically. To reduce the burden of the network for feature extraction, which can lead to the network simplicity, proper input color channels could be selected. In this paper, a pruning framework is proposed to simplify these complex structures through the selection of most informative color channels and simplification of the network. Moreover, hardware requirements of different network structures are identified to analyze the complexity of different networks. Experimental results are conducted for segmentation of images from two publicly available datasets of both dermoscopy and non-dermoscopy images. Simulation results show that using the proposed color channel selection method, simple and efficient neural network structures can be applied for segmentation of skin abnormalities. (C) 2020 Elsevier Ltd. All rights reserved.
机译:自动分析皮肤异常是一种有效的医学专家,以促进诊断程序和改善其能力。用于分析皮肤异常的高效和准确方法,例如卷积神经网络(CNN)通常是复杂的。因此,由于功率和资源限制,便携式医疗器械中的这种复杂结构的实施是不可行的。 CNN可以自动提取来自皮肤异常图像的特征。为减少特征提取的网络负担,这可能导致网络简单,可以选择正确的输入颜色通道。在本文中,提出了一种修剪框架,通过选择大多数信息性颜色信道和网络的简化来简化这些复杂结构。此外,识别不同网络结构的硬件要求以分析不同网络的复杂性。用于从DermicoCy和非Dermoscopy图像的两个公共数据集分割的图像进行实验结果。仿真结果表明,使用所提出的颜色通道选择方法,可以应用简单高效的神经网络结构,用于分割皮肤异常。 (c)2020 elestvier有限公司保留所有权利。

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