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Research on Optical Network Port State Objects Detection Algorithm Based on Deep Learning

机译:基于深度学习的光网络端口状态对象检测算法研究

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The passivity of optical network makes its port usage state impossible to be accurately mastered by remote monitoring system. This study applies a deep learning algorithm to port state detection. First, the algorithm was selected. Second, based on the fixed height-width ratio of the port, k-means cluster analysis was used to determine the height-width ratio for the dimensions of the candidate frame. Finally, the data set was expanded by data enhancement. The experimental results showed that the accuracy of port detection network is as high as 87%. Additionally, it can be applied to other port-intensive devices, providing a certain robustness.
机译:光网络的被动性使其端口使用状态不可能被远程监控系统准确掌握。本研究适用于端口状态检测的深度学习算法。首先,选择算法。其次,基于端口的固定高度宽度比,用于确定候选框架的尺寸的高度宽度比的K-Means集群分析。最后,数据集通过数据增强扩展。实验结果表明,端口检测网络的准确性高达87%。此外,它可以应用于其他端口密集型设备,提供一定的稳健性。

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