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首页> 外文期刊>Journal of Infrastructure Systems >Image Retraining Using TensorFlow Implementation of the Pretrained Inception-v3 Model for Evaluating Gravel Road Dust
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Image Retraining Using TensorFlow Implementation of the Pretrained Inception-v3 Model for Evaluating Gravel Road Dust

机译:使用普雷雷雷达 - V3模型进行纹身流的图像刷新用于评估砾石道尘的型号

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摘要

In gravel roads management systems (GRMS), the need for a holistic approach for detecting the dust amounts on gravel roads has enabled the development of a solution that works based on one of the subdisciplines of artificial intelligence (AI). Recently, machine learning is one of the most widely used algorithms to train data to optimize systems. The advances in machine learning has enabled us to develop a complex application. This paper demonstrates the ability of using one of the most popular machine learning frameworks TensorFlow to build an image classifier. This classifier has the ability to classify the dust amounts on gravel roads into four major levels (None, Low, Medium, and High). This classifier is based on the aspect of optimizing one of the deep neural networks models Inception-v3 model. This model contains a pretrained package used to extract and recognize dust patterns from dust images automatically. In this paper, a data set of 4,000 images of gravel roads were collected. For training, 80% of the data set was used, and 20% was used for testing. Furthermore, a prediction accuracy plot was generated, and it was found that this classifier achieves a prediction accuracy of 72%.
机译:在砾石道路管理系统(GRMS)中,需要一种用于检测砾石道路上的灰尘量的整体方法,使得能够开发基于人工智能(AI)的三个子专心的解决方案。最近,机器学习是最广泛使用的算法之一,可以培训数据以优化系统。机器学习的进步使我们能够开发复杂的应用程序。本文展示了使用最受欢迎的机器框架框架TensorFlow之一来构建图像分类器的能力。该分类器能够将碎片道路上的灰尘量分为四个主要水平(无,低,中等和高)。该分类器基于优化一个深神经网络模型成立-V3模型的方面。该模型包含用于自动从灰尘图像中提取和识别灰尘模式的预磨料包。本文收集了4,000张碎石道图像的数据集。对于培训,使用80%的数据集,20%用于测试。此外,产生预测精度图,发现该分类器实现了72%的预测精度。

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