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Computer-aided diagnosis (CAD) system based on multi-layer feature fusion network for skin lesion recognition in dermoscopy images

机译:基于多层特征融合网络的计算机辅助诊断(CAD)系统在皮肤病识别中的皮肤病识别

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摘要

Skin lesion recognition is one of the most important tasks in dermoscopic image analysis. Current Convolutional Neural Network (CNN) algorithms based recognition methods tend to become a standard methodology to fix a large array of Computer-Aided Diagnosis (CAD) and interpretation problems. Besides significant practical and theoretical improvements in their architecture, their effectiveness is built on the existence of the flexible pre-trained models which generalize well to novel tasks and handle the problem of having small set of dermoscopic data. However, existing works pay little attention to exploring the benefits of hierarchical multi-feature fusion for classifying the skin lesions in digital dermoscopic images. Practically, it has been found that integrating multi-layer features has significant potential for improving performance of any pattern recognition task. In this paper, we developed a robust CAD system based on transfer learning and multi-layer feature fusion network to diagnose complex skin diseases. It is a convenient approach in terms of overfitting prevention, convergence speed and high morphological feature similarity processing. Our research focuses exclusively on obtaining optimal performance with addressing the various gaps in the skin pattern recognition area. For validation and comparison purposes, the proposed approach was evaluated on publicly dermoscopic dataset, and achieved the high recognition precision compared with fully trained CNN models, fine-tuning process, single CNN model and other related works. Therefore, the study demonstrates that our proposed approach can dramatically improve the performance of CAD systems which are based on the conventional recognition and classification algorithms for skin lesion recognition in dermoscopic data.
机译:皮肤病变识别是Dermoscopic图像分析中最重要的任务之一。目前的卷积神经网络(CNN)基于识别方法的识别方法倾向于成为修复大量计算机辅助诊断(CAD)和解释问题的标准方法。除了在架构中的显着实用和理论改进之外,它们的有效性是基于灵活的预先训练模型的存在,这概括了新的任务,并处理具有小型DerMicropic数据的问题。然而,现有工程几乎没有注意探索分层多种特征融合的益处,以对数字皮肤图像中的皮肤病变进行分类。实际上,已经发现集成多层特征具有提高任何模式识别任务性能的显着潜力。在本文中,我们开发了一种基于传输学习和多层特征融合网络的强大CAD系统,以诊断复杂的皮肤病。在预装配,收敛速度和高形态特征相似性处理方面是一种方便的方法。我们的研究专注于获得最佳性能,通过解决皮肤模式识别区域中的各种空隙。为了验证和比较目的,在公开的DerMicopic数据集中评估了所提出的方法,并与完全训练的CNN模型,微调过程,单CNN模型和其他相关工程相比,实现了高识别精度。因此,该研究表明,我们所提出的方法可以显着提高CAD系统的性能,这是基于传统识别和分类算法的皮肤病数据中的皮肤病变识别。

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