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A Multi-Category Brain Tumor Classification Method Bases on Improved ResNet50 被引量:1

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摘要 Brain tumor is one of the most common tumors with high mortality.Early detection is of great significance for the treatment and rehabilitation of patients.The single channel convolution layer and pool layer of traditional convolutional neural network(CNN)structure can only accept limited local context information.And most of the current methods only focus on the classification of benign and malignant brain tumors,multi classification of brain tumors is not common.In response to these shortcomings,considering that convolution kernels of different sizes can extract more comprehensive features,we put forward the multi-size convolutional kernel module.And considering that the combination of average-pooling with max-pooling can realize the complementary of the high-dimensional information extracted by the two structures,we proposed the dual-channel pooling layer.Combining the two structures with ResNet50,we proposed an improved ResNet50 CNN for the applications in multi-category brain tumor classification.We used data enhancement before training to avoid model over fitting and used five-fold cross-validation in experiments.Finally,the experimental results show that the network proposed in this paper can effectively classify healthy brain,meningioma,diffuse astrocytoma,anaplastic oligodendroglioma and glioblastoma.
出处 《Computers, Materials & Continua》 SCIE EI 2021年第11期2355-2366,共12页 计算机、材料和连续体(英文)
基金 This paper is supported by the National Youth Natural Science Foundation of China(61802208) the National Natural Science Foundation of China(61873131) the Natural Science Foundation of Anhui(1908085MF207 and 1908085QE217) the Key Research Project of Anhui Natural Science(KJ2020A1215 and KJ2020A1216) the Excellent Youth Talent Support Foundation of Anhui(gxyqZD2019097) the Postdoctoral Foundation of Jiangsu(2018K009B) the Higher Education Quality Project of Anhui(2019sjjd81,2018mooc059,2018kfk009,2018sxzx38 and 2018FXJT02) the Fuyang Normal University Doctoral Startup Foundation(2017KYQD0008).
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