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Open-Set Recognition for Skin Lesions Using Dermoscopic Images

机译:使用Dermoscopic图像的皮肤病变的开放式识别

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摘要

Application of deep neural networks in learning underlying dermoscopic patterns and classifying skin-lesion pathology is crucial. It can help in early diagnosis which can lead to timely therapeutic intervention and efficacy. To establish the clinical applicability of such techniques it is important to delineate each pathology with superior accuracy. However, with innumerable types of skin conditions and supervised closed class classification methods trained on limited classes, applicability into clinical workflow could be unattainable. To mitigate this issue our work considers this as an open-set recognition problem. The technique is divided into two stages, closed-set classification of labelled data and open-set recognition for unknown classes which employs an autoen-coder for conditional reconstruction of the input image. We compare our technique to a traditional baseline method and demonstrate on ISIC and Derm7pt data, higher accuracy and sensitivity for known as well as unknown classes. In summary, our open-set recognition method for dermoscopic images illustrates high clinical applicability.
机译:深度神经网络在学习潜在的皮肤模式和分类皮肤病病理学中的应用至关重要。它可以有助于早期诊断,这可能导致及时治疗干预和疗效。为了建立这种技术的临床适用性,以卓越的准确性描绘每种病理学是重要的。然而,随着无数类型的皮肤状况和受到限制课程培训的监督封闭式分类方法,可能是临床工作流程的适用性可能是无法实现的。为了缓解此问题,我们的工作认为这是一个开放式识别问题。该技术分为两个阶段,标记数据的闭合分类和用于未知类的打开的类别,其采用自动编码器进行输入图像的条件重建。我们将技术与传统的基线方法进行比较,并展示ISIC和DERM7PT数据,更高的准确性和敏感性,众所周知和未知的类别。总之,我们的Dermospic图像的开放式识别方法说明了高临床适用性。

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