融合双残差结构和注意机制的脑肿瘤类型识别算法

Shubin Yang, Feng-ge Wang, Chunlin Dong
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引用次数: 0

摘要

脑肿瘤类型识别在脑肿瘤诊断中发挥着重要作用,为了解决现有识别算法准确率低、实时性差的问题,本文结合双残差结构和注意机制,基于ResNet34实现了准确、实时的脑肿瘤类型识别。第一步是在减少参数数量的同时增强算法提取多尺度特征的能力,方法是用多尺度卷积代替算法中原有的卷积,避免丢失过大或过小的特征;其次,通过将原始结构改为双残差结构,减轻了深层特征的损失,防止了算法的退化;最后,为了增强重要特征的权重,在侧链残差结构中嵌入注意机制模块,避免冗余特征对识别精度的影响。然后将提取的特征传递给分类器以准确识别脑肿瘤的类型。在kaggle公共数据集上对改进算法进行了验证,准确率达到97.4%,参数个数为7个。59M,比原模型精度提高2%,参数数量提高33%,优于现有的一些经典和主流算法。实验结果表明,该算法能够准确、快速地识别脑肿瘤的类型,从而帮助医生进行后续治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brain Tumor Type Recognition Algorithm Fused with Double Residual Structure and Attention Mechanism
Brain tumor type recognition plays an important role in brain tumor diagnosis, In order to solve the problems of low accuracy and poor real-time performance of existing recognition algorithms, this paper combines double residual structure and attention mechanism to accurately and real-time brain tumor type recognition based on ResNet34. The first step is to reduce the number of parameters while enhancing the algorithm’s ability to extract multi-scale features by replacing the original convolution in the algorithm with a multi-scale convolution to avoid the loss of too large or too small features; Secondly, the loss of features due to deep layers is mitigated by changing the original structure to a double residual structure to prevent degradation of the algorithm. Finally, in order to enhance the weight of important features, an attention mechanism module is embedded in the sidechain residual structure to avoid the impact of redundant features on recognition accuracy. The extracted features are then passed to a classifier for accurate identification of the type of brain tumour. The improved algorithm was validated under the kaggle public dataset, and its accuracy reached 97.4% and the number of parameters was 7. 59M, which is 2% more accurate than the original model and 33% of the number of parameters, and outperformed some existing classical and mainstream algorithms. The experimental results show that the algorithm can accurately and quickly identify the type of brain tumour, which can help doctors in the subsequent treatment.
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