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A Relation Hashing Network Embedded with Prior Features for Skin Lesion Classification

机译:嵌入具有皮肤病变分类的现有功能的关系散列网络

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Deep neural networks have become an effective tool for solving end-to-end classification problems and are suitable for many diagnostic settings. However, the success of such deep models often depends on a large number of training samples with annotations. Moreover, deep networks do not leverage the power of domain knowledge which is usually essential for diagnostic decision. Here we propose a novel relation hashing network via meta-learning to address the problem of skin lesion classification with prior features. In particular, we present a deep relation network to capture and memorize the relation among different samples. To employ the prior domain knowledge, we construct the hybrid-prior feature representation via joint meta-learning based on handcrafted models and deep-learned features. In order to utilize the fast and efficient computation of representation learning, we further create a hashing hybrid-prior feature representation by incorporating deep hashing into hybrid-prior representation learning, and then integrating it into our proposed network. Final recognition is obtained from our hashing relation network by learning to compare among the hashing hybrid-prior features of samples. Experimental results on ISIC Skin 2017 dataset demonstrate that our hashing relation network can achieve the state-of-the-art performance for the task of skin lesion classification.
机译:深度神经网络已成为解决端到端分类问题的有效工具,适用于许多诊断设置。然而,这种深层模型的成功往往取决于具有注释的大量培训样本。此外,深网络不利用域知识的力量,这通常对于诊断决策至关重要。在这里,我们通过META学习提出了一种新颖的关系散列网络,以解决具有先前特征的皮肤病变分类问题。特别是,我们展示了一个深度关系网络来捕获和记忆不同样本之间的关系。为了采用现有域知识,我们通过基于手工模型和深度学习的功能来通过联合元学习构建混合事先特征表示。为了利用表现学习的快速和有效的计算,我们还通过将深度哈希结合到混合事先代表学习中,然后将其集成到我们所提出的网络中,进一步创建散列混合事先特征表示。通过学习从我们的散列关系网络获得最终识别,以便在散列混合的样本特征中进行比较。 ISIC Skin 2017数据集的实验结果表明,我们的散列关系网络可以实现皮肤病变分类任务的最先进的性能。

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