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Classification of Non-Tumorous Facial Pigmentation Disorders Using Improved Smote and Transfer Learning

机译:使用改进的Smote和转移学习对非肿瘤性面部色素沉着症进行分类

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Classification of non-tumorous facial pigmentation disorders is an important but overlooked problem. Recently, a voting-based probabilistic linear discriminant analysis (V-PLDA) method was developed to address this problem by extracting hand-craft features from a given image set of rather small size, with limited classification accuracy. In this paper, we propose an improved Synthetic Minority Over-sampling Technique (improved SMOTE) with several parameters tuned to fully utilize the available images. Moreover, transfer learning is applied to reduce the data size requirement of the deep learning model. By combining the improved SMOTE and transfer learning, a classification accuracy gain (10%) is attained compared to the state-of-the-art V-PLDA method.
机译:非肿瘤性面部色素沉着症的分类是一个重要但被忽视的问题。最近,开发了一种基于投票的概率线性判别分析(V-PLDA)方法来解决该问题,方法是从给定的相当小尺寸的图像集中提取手工特征,而分类精度却受到限制。在本文中,我们提出了一种经过改进的综合少数族裔过采样技术(改进的SMOTE),其中一些参数已调整为可以充分利用可用图像。此外,应用转移学习来减少深度学习模型的数据大小要求。通过结合改进的SMOTE和转移学习,与最新的V-PLDA方法相比,分类精度提高了10%。

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