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Cascaded CNN for Real-time Tongue Segmentation Based on Key Points Localization

机译:基于关键点定位的级联CNN实时舌音分割

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Automated Tongue Diagnosis (ATD) is a growing research field in recent years due to global demand of personal health care. Automated tongue segmentation is the fundamental technology for automated tongue diagnosis. It is significant to find an efficient and accurate tongue segmentation algorithm for mobile and embedded devices. However, researches in this field are inadequate. Existing methods are either not efficient or not accurate enough. Our paper first addresses these problems by presenting a class of efficient cascaded CNN models for tongue detection and segmentation, which is both lightweight and accurate compared with other high-performance algorithms. Furthermore, a new annotation method is proposed to reduce the workload of establishing a tongue segmentation database.
机译:由于全球对个人保健的需求,自动舌诊(ATD)是近年来发展中的研究领域。自动舌头分割是自动舌头诊断的基本技术。找到一种针对移动和嵌入式设备的高效,准确的舌头分割算法具有重要意义。但是,该领域的研究不足。现有方法要么效率不高,要么不够精确。我们的论文首先通过提出一类有效的级联CNN模型来进行舌头检测和分割来解决这些问题,与其他高性能算法相比,该模型既轻巧又准确。此外,提出了一种新的注释方法,以减少建立舌头分割数据库的工作量。

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