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TISNet-Enhanced Fully Convolutional Network with Encoder-Decoder Structure for Tongue Image Segmentation in Traditional Chinese Medicine

机译:TISNET-Enhod型全卷积网络,具有用于中医中的舌头图像分割的编码器解码器结构

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Extracting the tongue body accurately from a digital tongue image is a challenge for automated tongue diagnoses, as the blurred edge of the tongue body, interference of pathological details, and the huge difference in the size and shape of the tongue. In this study, an automated tongue image segmentation method using enhanced fully convolutional network with encoder-decoder structure was presented. In the frame of the proposed network, the deep residual network was adopted as an encoder to obtain dense feature maps, and a Receptive Field Block was assembled behind the encoder. Receptive Field Block can capture adequate global contextual prior because of its structure of the multibranch convolution layers with varying kernels. Moreover, the Feature Pyramid Network was used as a decoder to fuse multiscale feature maps for gathering sufficient positional information to recover the clear contour of the tongue body. The quantitative evaluation of the segmentation results of 300 tongue images from the SIPL-tongue dataset showed that the average Hausdorff Distance, average Symmetric Mean Absolute Surface Distance, average Dice Similarity Coefficient, average precision, average sensitivity, and average specificity were 11.2963, 3.4737, 97.26%, 95.66%, 98.97%, and 98.68%, respectively. The proposed method achieved the best performance compared with the other four deep-learning-based segmentation methods (including SegNet, FCN, PSPNet, and DeepLab v3+). There were also similar results on the HIT-tongue dataset. The experimental results demonstrated that the proposed method can achieve accurate tongue image segmentation and meet the practical requirements of automated tongue diagnoses.
机译:从数字舌图像中精确地提取舌头是自动舌诊断的挑战,作为舌头的模糊边缘,病理细节的干扰,以及舌头的尺寸和形状的巨大差异。在本研究中,提出了一种使用具有编码器 - 解码器结构的增强的完全卷积网络的自动舌图像分割方法。在所提出的网络的框架中,采用深度剩余网络作为编码器以获得密集特征映射,并且在编码器后面组装接收场块。由于其具有变化核的多刺卷积层的结构,接收场块可以捕获足够的全局背景。此外,特征金字塔网络被用作解码器,用于熔化多尺度特征图,用于收集足够的位置信息以恢复舌头的透明轮廓。从Sipl舌数据集的300个舌图像的分割结果的定量评估显示,平均对称的距离,平均对称的直观表面距离,平均骰子相似度系数,平均精度,平均灵敏度和平均特异性为11.2963,3.4737, 97.26%,95.66%,98.97%和98.68%。与其他四个基于深度学习的分割方法(包括SEGNET,FCN,PSPNET和DEEPLAB V3 +)相比,该方法实现了最佳性能。击球数据集也存在类似的结果。实验结果表明,该方法可以实现准确的舌头图像分割并满足自动舌诊断的实际要求。

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