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Study of the Application of Deep Convolutional Neural Networks (CNNs) in Processing Sensor Data and Biomedical Images

机译:深度卷积神经网络(CNN)在处理传感器数据和生物医学图像中的应用研究

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摘要

The fast progress in research and development of multifunctional, distributed sensor networks has brought challenges in processing data from a large number of sensors. Using deep learning methods such as convolutional neural networks (CNN), it is possible to build smarter systems to forecasting future situations as well as precisely classify large amounts of data from sensors. Multi-sensor data from atmospheric pollutants measurements that involves five criteria, with the underlying analytic model unknown, need to be categorized, so do the Diabetic Retinopathy (DR) fundus images dataset. In this work, we created automatic classifiers based on a deep convolutional neural network (CNN) with two models, a simpler feedforward model with dual modules and an Inception Resnet v2 model, and various structural tweaks for classifying the data from the two tasks. For segregating multi-sensor data, we trained a deep CNN-based classifier on an image dataset extracted from the data by a novel image generating method. We created two deepened and one reductive feedforward network for DR phase classification. The validation accuracies and visualization results show that increasing deep CNN structure depth or kernels number in convolutional layers will not indefinitely improve the classification quality and that a more sophisticated model does not necessarily achieve higher performance when training datasets are quantitatively limited, while increasing training image resolution can induce higher classification accuracies for trained CNNs. The methodology aims at providing support for devising classification networks powering intelligent sensors.
机译:多功能分布式传感器网络的研究与开发的快速进展给处理来自大量传感器的数据带来了挑战。使用卷积神经网络(CNN)之类的深度学习方法,可以构建更智能的系统来预测未来情况以及精确分类来自传感器的大量数据。来自大气污染物测量的涉及五项标准的多传感器数据(其潜在的分析模型未知)需要分类,糖尿病性视网膜病变(DR)眼底图像数据集也需要分类。在这项工作中,我们创建了基于深度卷积神经网络(CNN)的自动分类器,该模型具有两个模型,一个具有双模块的更简单的前馈模型和一个Inception Resnet v2模型,以及用于对这两个任务中的数据进行分类的各种结构调整。为了分离多传感器数据,我们在通过新型图像生成方法从数据中提取的图像数据集上训练了基于深度CNN的分类器。我们为灾难恢复阶段分类创建了两个加深的还原性前馈网络。验证精度和可视化结果表明,在卷积层中增加深CNN结构深度或核数目并不会无限提高分类质量,并且当训练数据集受到定量限制时,更复杂的模型不一定会实现更高的性能,同时会增加训练图像的分辨率可以为经过训练的CNN带来更高的分类精度。该方法旨在为设计支持智能传感器的分类网络提供支持。

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