利用剩余注意网络改进皮肤病分类

Mehul Jain, Kajal Gupta, Rajni Jindal
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引用次数: 0

摘要

人体最重要的器官是皮肤。它在维持生命和健康方面起着至关重要的作用。它有助于在身体内部器官和外部环境的不利因素之间提供一个气密,水密和灵活的屏障。皮肤病占全球疾病负担的1.79%。视觉检查皮肤病技术的发展对于加快诊断和减少危及生命的情况至关重要。文献中已经提出了通过图像处理和各种机器学习算法对皮肤疾病进行自动分类。先前的研究表明,卷积神经网络(cnn)在不提供这些特定区域的注释边界框的情况下,具有识别图像中特定区域的强大能力。因此,我们计划比较带有残余注意网络模型的自定义CNN模型和基于ResNet的没有任何注意层的自定义CNN模型来解决皮肤分类问题。注意层将提高CNN模型的定位能力,只考虑图像中的相关区域。此外,残差网络在小样本学习问题上效果更好。因此,残差单元和注意单元相结合是解决这一问题的合适方法。
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Improving Skin Disease Classification using Residual Attention Network
The most substantial organ of the human body is the skin. It plays an essential role in the sustenance of life and health. It helps in providing an airtight, watertight and flexible barrier between the internal body organs and the adverse elements from outside environment. Skin conditions contribute 1.79% of the global burden of disease worldwide. Development in techniques to visually inspect a skin disease is essential to fasten diagnosis and minimise life-threatening situations. Automated classification of skin disorders via image processing and various machine learning algorithms have been proposed in the literature. Previous research has demonstrated that Convolutional Neural Networks (CNNs) have great ability to recognise specific regions in images without providing the annotated bounding boxes of those specific regions. Hence, we plan to compare a custom CNN model along with the Residual Attention Network model and a custom CNN model based on ResNet without any attention layers for skin classification problems. The attention layer would improve the localisation ability of a CNN model and consider only the relevant regions from the images. Moreover, the residual network works better for small sample learning problems. So, a combination of residual and attention units is suitable to tackle the concerned problems.
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