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首页> 外文期刊>Cybernetics, IEEE Transactions on >Tooth-Marked Tongue Recognition Using Multiple Instance Learning and CNN Features
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Tooth-Marked Tongue Recognition Using Multiple Instance Learning and CNN Features

机译:使用多实例学习和CNN功能进行牙齿标记的舌头识别

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摘要

Tooth-marked tongue or crenated tongue can provide valuable diagnostic information for traditional Chinese Medicine doctors. However, tooth-marked tongue recognition is challenging. The characteristics of different tongues are multi-form and have a great amount of variations, such as different colors, different shapes, and different types of teeth marks. The regions of teeth mark only appear along the lateral borders. Most existing methods make use of concave regions information to classify the tooth-marked tongue which leads to inconstant performance when the region of teeth mark is not concave. In this paper, we try to solve these problems by proposing a three-stage approach which first makes use of concavity information to propose the suspected regions, then use a convolutional neural network to extract deep features and at last use a multiple-instance classifier to make the final decision. Experimental results demonstrate the effectiveness of the proposed method.
机译:齿状舌或锯齿状舌可以为中医提供有价值的诊断信息。但是,带有齿痕的舌头识别具有挑战性。不同舌头的特征是多种形式的,并且变化很大,例如不同的颜色,不同的形状以及不同类型的牙齿印记。牙齿标记的区域仅沿横向边界出现。大多数现有方法利用凹入区域信息来对齿纹舌进行分类,当齿纹区域不是凹形时,这会导致性能不稳定。在本文中,我们尝试通过提出一种三阶段方法来解决这些问题,该方法首先利用凹度信息来提出可疑区域,然后使用卷积神经网络来提取深度特征,最后使用多实例分类器来解决这些问题。做出最终决定。实验结果证明了该方法的有效性。

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