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State-of-the-Art CNN Optimizer for Brain Tumor Segmentation in Magnetic Resonance Images

机译:磁共振图像中脑肿瘤分割的最先进的CNN优化器

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摘要

Brain tumors have become a leading cause of death around the globe. The main reason for this epidemic is the difficulty conducting a timely diagnosis of the tumor. Fortunately, magnetic resonance images (MRI) are utilized to diagnose tumors in most cases. The performance of a Convolutional Neural Network (CNN) depends on many factors (i.e., weight initialization, optimization, batches and epochs, learning rate, activation function, loss function, and network topology), data quality, and specific combinations of these model attributes. When we deal with a segmentation or classification problem, utilizing a single optimizer is considered weak testing or validity unless the decision of the selection of an optimizer is backed up by a strong argument. Therefore, optimizer selection processes are considered important to validate the usage of a single optimizer in order to attain these decision problems. In this paper, we provides a comprehensive comparative analysis of popular optimizers of CNN to benchmark the segmentation for improvement. In detail, we perform a comparative analysis of 10 different state-of-the-art gradient descent-based optimizers, namely Adaptive Gradient (Adagrad), Adaptive Delta (AdaDelta), Stochastic Gradient Descent (SGD), Adaptive Momentum (Adam), Cyclic Learning Rate (CLR), Adaptive Max Pooling (Adamax), Root Mean Square Propagation (RMS Prop), Nesterov Adaptive Momentum (Nadam), and Nesterov accelerated gradient (NAG) for CNN. The experiments were performed on the BraTS2015 data set. The Adam optimizer had the best accuracy of 99.2% in enhancing the CNN ability in classification and segmentation.
机译:脑肿瘤已成为全球死亡的主要原因。这种流行病的主要原因是难以及时诊断肿瘤。幸运的是,在大多数情况下,利用磁共振图像(MRI)来诊断肿瘤。卷积神经网络(CNN)的性能取决于许多因素(即重量初始化,优化,批量和时期,学习率,激活函数,丢失功能和网络拓扑),数据质量和这些模型属性的特定组合。当我们处理分割或分类问题时,利用单个优化器被视为弱测试或有效性,除非选择优化器的决定是由强大的论证备份的。因此,优化器选择过程被认为是验证单个优化器的用法以获得这些决策问题的重要性。在本文中,我们对CNN的流行优化器进行了全面的比较分析,以基准进行改进的分割。详细地,我们对10种不同最先进的梯度下降的优化器进行了比较分析,即适应性梯度(adagrad),自适应δ(Adadelta),随机梯度下降(SGD),自适应动量(ADAM),循环学习率(CLR),自适应最大池(Adamax),均方根传播(RMS PRAC),Nesterov自适应动量(NADAM)和Nesterov加速梯度(NAG)用于CNN。在Brats2015数据集上进行实验。 ADAM优化器在提高分类和分割中的CNN能力方面具有最佳精度为99.2%。

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