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首页> 外文期刊>International Journal of Networking and Computing >CNN Architecture for Surgical Image Segmentation with Recursive Structure and Flip-Based Upsampling
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CNN Architecture for Surgical Image Segmentation with Recursive Structure and Flip-Based Upsampling

机译:具有递归结构的外科图像分割的CNN架构和基于翻转的上采样

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摘要

Laparoscopic surgery, a less invasive camera-aided surgery, is now performed commonly. However, it requires a camera assistant who holds and maneuvers a laparoscope. By controlling the laparoscope automatically using a robot, a surgeon can perform the operation without a camera assistant, which would be beneficial in areas suffering from lack of surgeons. In this paper, a prototype image segmentation architecture based on a convolutional neural network (CNN) is proposed to realize an automated laparoscope control for cholecystectomy. Since a training dataset is annotated manually by a few surgeons, its scale is limited compared to common CNN-based systems. Therefore, we built a recursive network structure, with some sub-networks which are used multiple times, to mitigate overfitting. In addition, instead of the common transposed convolution, the flip-based subpixel reconstruction is introduced into upsampling layers. Furthermore, we applied stochastic depth regularization to the recursive structure for better accuracy. Evaluation results revealed that these improvements bring better classification accuracy without increasing the number of parameters. The system shows a throughput sufficient for real-time laparoscope robot control with a single NVIDIA GeForce GTX 1080 GPU.
机译:现在进行腹腔镜手术,较少的侵入式相机辅助手术。但是,它需要一个相机助手,持有和操纵腹腔镜。通过使用机器人自动控制腹腔镜,外科医生可以在没有相机助理的情况下执行操作,这在缺乏外科医生的地区将是有益的。本文提出了一种基于卷积神经网络(CNN)的原型图像分割架构,以实现胆囊切除术的自动腹腔镜控制。由于培训数据集通过少数外科医生手动注释,因此与基于CNN的普通CNN的系统相比,其比例有限。因此,我们构建了递归网络结构,其中一些子网使用多次,以减轻过度拟合。另外,代替常见的转置卷积,基于翻盖的子像素重建被引入上采样层。此外,我们将随机深度正则化应用于递归结构以获得更好的准确性。评估结果表明,这些改进带来了更好的分类准确性而不增加参数的数量。该系统显示了一种足以进行实时探头机器人控制的吞吐量,用单个NVIDIA GeForce GTX 1080 GPU。

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