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首页> 外文期刊>IETE Technical Review >Mobile Phone based ensemble classification of Deep Learned Feature for Medical Image Analysis
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Mobile Phone based ensemble classification of Deep Learned Feature for Medical Image Analysis

机译:基于移动电话的专业分类医学图像分析深度学习功能

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This research proposes a pre-trained mobile application for medical image diagnosis; it examined the benefit of deep learning approaches for white blood cell and chest radiography analysis. The feature extraction network comprised three convolutional layers using several filters with varying dimensions containing two max-pooling and batch normalization layers. The Relu layer was implemented in all the Convolutional Networks, and the learned feature output is extracted using the fully connected layers based on nodes constructed at each layer. While the Ensemble Classifier consists of a Principal Component Analysis based feature reduction, and five base learners using bagging to classify medical image datasets. The front end was designed using Unity 3D while the backend is programed using MATLAB; a comparative analysis showed the effectiveness of the proposed Convolutional Neural Network ensemble for pathological diagnoses and classification bias caused by handcrafted feature sets. The results proved that deep models could potentially change the design structure of the Computer Aided Design systems while excluding the rigorous task of development and selection of problem-oriented features.
机译:本研究提出了一种预先训练的移动应用程序的医学图像诊断;它检查了白细胞和胸部射线照相分析的深度学习方法的好处。特征提取网络包括三个卷积层,使用多个滤波器,其具有两个最大池和批量归一化层的不同尺寸。在所有卷积网络中实现了Relu层,并且使用基于在每个层构造的节点的完全连接的层来提取学习的特征输出。虽然合并分类器由基于主成分分析的特征分析组成,但是使用BAGGENG的五个基本学习者分类医学图像数据集。前端使用Unity 3D设计,而后端使用MATLAB进行编程;比较分析显示了由手工特征集引起的病理诊断和分类偏置的拟议卷积神经网络集合的有效性。结果证明,深层模型可能会改变计算机辅助设计系统的设计结构,同时排除开发的严格任务和选择面向问题的功能。

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