论文标题
在结肠镜检查中检测息肉的深度卷积神经网络
A Deep Convolutional Neural Network for the Detection of Polyps in Colonoscopy Images
论文作者
论文摘要
由于结肠镜检查过程中多个类似息肉的模仿者的外观,质地,颜色,大小和存在的外观,质地,颜色,大小和存在的差异很大,因此对结肠息肉的计算机检测仍然是一个未解决的问题。在本文中,我们提出了一个基于卷积神经网络的模型,用于对结肠镜检查中息肉的计算机检测。所提出的模型包括16个卷积层,上面有2个完全连接的层和一个软磁层,在其中我们使用同一隐藏层内的不同卷积内核实施了独特的方法,以进行更深的特征提取。我们应用了两个不同的激活函数,即MISH和整流线性单位激活函数,以更深入地传播信息和自我正常的平滑非单调性。此外,我们使用了联合的广义交集,从而克服了比例不变性,旋转和形状等问题。数据增强技术(如光度法和几何畸变)被改编以克服息肉检测中所面临的障碍。提供了详细的基准测试结果,在精确度,灵敏度,F1分数,F2分数和骰子上表现出更好的性能,从而证明了所提出的模型的功效。
Computerized detection of colonic polyps remains an unsolved issue because of the wide variation in the appearance, texture, color, size, and presence of the multiple polyp-like imitators during colonoscopy. In this paper, we propose a deep convolutional neural network based model for the computerized detection of polyps within colonoscopy images. The proposed model comprises 16 convolutional layers with 2 fully connected layers, and a Softmax layer, where we implement a unique approach using different convolutional kernels within the same hidden layer for deeper feature extraction. We applied two different activation functions, MISH and rectified linear unit activation functions for deeper propagation of information and self regularized smooth non-monotonicity. Furthermore, we used a generalized intersection of union, thus overcoming issues such as scale invariance, rotation, and shape. Data augmentation techniques such as photometric and geometric distortions are adapted to overcome the obstacles faced in polyp detection. Detailed benchmarked results are provided, showing better performance in terms of precision, sensitivity, F1- score, F2- score, and dice-coefficient, thus proving the efficacy of the proposed model.