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Multi-source fusion for weak target images in the Industrial Internet of Things

机译:物业互联网中弱目标图像的多源融合

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摘要

Due to the influence of information fusion in Industrial Internet of Things (IIoT) environments, there are many problems, such as weak intelligent visual target positioning, disappearing features, large error in visual positioning processes, and so on. Therefore, this paper proposes a weak target positioning method based on multi-information fusion, namely the "confidence interval method". The basic idea is to treat the brightness and gray value of the target feature image area as a population with a certain average and standard deviation in IIoT environments. Based on the average and the standard deviation, and using a reasonable confidence level, a critical threshold is obtained. Compared with the threshold obtained by the maximum variance method, the obtained threshold is more suitable for the segmentation of key image features in an environment in which interference is present. After interpolation and de-noising, it is applied to mobile weak target location of complex IIoT systems. Using the metallurgical industry for experimental analysis, results show that the proposed method has better performance and stronger feature resolution.
机译:由于信息融合在工业互联网上的信息融合(IIOT)环境中,存在许多问题,如弱智视觉目标定位,消失功能,视觉定位过程中的误差大,等等。因此,本文提出了一种基于多信息融合的弱目标定位方法,即“置信区间方法”。基本思想是将目标特征图像区域的亮度和灰度视为具有IIT环境的一定平均值和标准偏差的群体。基于平均值和标准偏差,并使用合理的置信水平,获得临界阈值。与通过最大方差方法获得的阈值相比,所获得的阈值更适合于在存在干扰的环境中的关键图像特征的分割。在插值和取消通知后,它适用于复杂IIOT系统的移动弱目标位置。使用冶金工业进行实验分析,结果表明该方法具有更好的性能和更强的特征分辨率。

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