基于新型u型编码器结构的医学图像脑肿瘤分割

Farzana Mushtaq, Faisal Rehman, Hira Akram, Sameen Butt, Syeda Fareeha Batool, Maheen Jafer, Nadeem Sarfaraz, Anza Gul
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引用次数: 0

摘要

利用核磁共振图像对大脑进行自动分割是医学领域和计算机视觉领域具有挑战性的任务之一。从文献来看,深度神经网络的重要性是明确的,因为它在准确性和时间上为脑肿瘤分割问题提供了有效的结果。大多数情况下,训练时间是根据图像的特征来分配的,为此需要额外的计算能力来训练神经网络模型。本文克服了梯度问题,对新单元模型进行了微调。cnn & u型编码器和解码器结构在精度和时间方面比其他神经网络产生更有效的结果。本研究还进行了比较,以证明U型编码器解码器架构的鲁棒性。新颖的编码器和解码器模型精度为0.947%,优于cnn等其他神经网络。此外,就训练时间而言,这个模型大约比其他模型快三倍,这就是为什么训练这个模型所需的计算能力更少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of Brain Tumor from Medical Images with Novel U-Shaped Encoder Decoder Architecture
One of the Challenging tasks in medical field and computer vision is automatic brain segmentation with MRI (Magnetic Resonance Images). From the literature, the importance of deep neural networks is cleared as they have provided effective results in brain tumor segmentation problem in terms of accuracy and time. Mostly the training time is issued due to image features and for this purpose extra computational power is required to train the neural network model. The gradient problem is overcome in this study to fine tune the Novel unit model. CNNs & U-Shaped encoder decoder architectures produce effective result than other neural networks in terms of accuracy and time. The comparison is also performed in this study to show the robustness of U- Shaped encoder decoder architecture. Novel encoder and decoder model accuracy is 0.947 %that is better than other neural networks e.g., CNNs. Further this model is roughly three time faster than other models in terms of training time that's why less computation power is required to train this model.
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