In recent advancement towards computer based diagnostics system, the classification of brain tumor images is a challenging task. This paper mainly focuses on elevating the classification accuracy of brain tumor images with transfer learning based deep neural network. The classification approach is started with the image augmentation operation including rotation, zoom, hori-zontal flip, width shift, height shift, and shear to increase the diversity in image datasets. Then the general features of the input brain tumor images are extracted based on a pre-trained transfer learning method comprised of Inception-v3. Fi-nally, the deep neural network with 4 customized layers is employed for classi-fying the brain tumors in most frequent brain tumor types as meningioma, glioma, and pituitary. The proposed model acquires an effective performance with an overall accuracy of 96.25% which is much improved than some existing multi-classification methods. Whereas, the fine-tuning of hyper-parameters and inclusion of customized DNN with the Inception-v3 model results in an im-provement of the classification accuracy.
翻译:最近,在计算机诊断系统中,脑肿瘤图像的分类是一项具有挑战性的任务。本文件主要侧重于通过基于深神经网络的转移学习来提高脑肿瘤图像的分类准确性。 分类方法从图像增强操作开始, 包括旋转、 缩放、 激素翻转、 宽度转换、 高度移转和剪切, 以增加图像数据集的多样性。 然后, 输入脑肿瘤图像的一般特征, 依据由Inception- v3. Fi- nally组成的预先培训传输学习方法来提取。 在4个定制层的深神经网络中, 使用4个定制层的深神经网络, 用于最经常出现的脑肿瘤类型中的脑肿瘤类, 如脑膜瘤、 显微镜和垂滴滴。 拟议的模型获得有效性能, 总精度为96. 25%, 大大改进了某些现有的多级化方法。 然而, 超参数的微调和将定制的DNNN与Inpion- v3模型纳入了分类准确性能。