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Deep convolution neural network for image recognition

机译:深度卷积神经网络图像识别

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摘要

During an epidemic crisis, medical image analysis namely microscopic analyses are made to confirm or not the existence of the epidemic pathogen in suspected cases. Pathogen are all infectious agents such as a virus, bacterium, protozoa, prion etc. However, there is often a lack of specialists in the handling of microscopes, hence allowing the need to make the microscopic analysis abroad. This results in a considerable loss of time and in the meantime, the epidemic continues to spread. To save time in the analysis of samples, we propose to make the future microscopes more intelligent so that they will be able to indicate by themselves the existence or not of the pathogen of an epidemic in a sample. To have a smart microscope, we propose a methodology based on efficient Convolution Neural Network (CNN) architecture in order to classify epidemic pathogen with five deep learning phases: (1) Training dataset of provided images (2) CNN Training (3) Testing data preparation (4) CNN generated model on testing data and finally (5) Evaluation of images classified. The resulted classification process can be integrated in a mobile computing solution on future microscopes. CNN can improve the accuracy in pathogens diagnosis that are focused on hand-tuned feature extraction implying some human mistakes. For our study, we consider cholera and malaria epidemics for microscopic images classification with a relevant CNN, respectively Vibrio cholerae images and Plasmodium falciparum images. Image classification is the task of taking an input image and outputting a class or a probability of classes that best describes the image. Interesting results have been obtained from the CNN model generated achieving the classification accuracy of 94%, with 200 Vibrio cholera images and 200 Plasmodium falciparum images for training dataset and 80 images for testing data. Although this document addresses the classification of epidemic pathogen images using a CNN model, the underlying principles app
机译:在疫情危机期间,医学图像分析即微观分析是在疑似病例中确认或不存在流行病病原体的存在。病原体是诸如病毒,细菌,原生动物,朊病毒等的传染性药物,但是,在处理显微镜时通常缺乏专家,因此允许需要在国外进行微观分析。这导致相当大的时间损失和与此同时,流行病仍然蔓延。为了节省样本的分析中的时间,我们建议使未来的显微镜更加智能化,以便它们能够通过样本中的流行病的病原体来表明它们。要具有智能显微镜,我们提出了一种基于高效卷积神经网络(CNN)架构的方法,以便将流行病病原体分类为五个深入学习阶段:(1)提供图像(2)CNN训练(3)测试数据的训练数据集准备(4)CNN产生的测试数据模型,最后(5)评估图像分类。产生的分类过程可以集成在未来显微镜上的移动计算解决方案中。 CNN可以提高诊断的诊断的准确性,这些诊断集中于手工调节特征提取,这意味着一些人类错误。对于我们的研究,我们认为霍乱和疟疾流行病与相关的CNN分别进行显微图像分类,分别是霍乱霍乱图像和疟原虫图像。图像分类是拍摄输入图像并输出类别的任务或最能描述图像的类的概率。从CNN模型获得了有趣的结果,该模型获得了94%的分类精度,200个振动霍乱图像和200个用于训练数据集的200个疟原虫图像和80个图像进行测试数据。虽然本文件使用CNN模型来解决流行病病原体图像的分类,但基础原则应用程序

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