利用多尺度特征和加权直方图对熔融金属进行自适应实时跟踪

Yifan Lei, Degang Xu
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摘要

在本研究中,我们研究了金属锭铸造过程中去渣过程中熔融金属区域的跟踪,并提出了一种基于自适应特征选择和加权直方图的实时跟踪方法。这项研究在金属冶炼中意义重大,因为高效的熔融金属跟踪对于有效去除渣滓和确保金属锭的质量至关重要。由于跟踪环境中光照和温度的影响,很难在金属浇注过程中使用工业相机提取合适的特征来跟踪熔融金属。我们将摄像机捕捉到的图像转换到多尺度特征空间,并选择熔融金属区域与周围背景区别最大的特征进行跟踪。此外,我们还在均值移动跟踪算法中引入了基于目标区域像素值的加权直方图,以提高跟踪精度。在跟踪过程中,目标模型会根据熔融金属区域的跨帧变化进行更新。实验测试证实,这种跟踪方法符合实际要求,有效地解决了熔融金属跟踪中的关键难题,为渣滓清除过程提供了可靠的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Real-Time Tracking of Molten Metal Using Multi-Scale Features and Weighted Histograms
In this study, we study the tracking of the molten metal region in the dross removal process during metal ingot casting, and propose a real-time tracking method based on adaptive feature selection and weighted histogram. This research is highly significant in metal smelting, as efficient molten metal tracking is crucial for effective dross removal and ensuring the quality of metal ingots. Due to the influence of illumination and temperature in the tracking environment, it is difficult to extract suitable features for tracking molten metal during the metal pouring process using industrial cameras. We transform the images captured by the camera into a multi-scale feature space and select the features with the maximum distinction between the molten metal region and its surrounding background for tracking. Furthermore, we introduce a weighted histogram based on the pixel values of the target region into the mean-shift tracking algorithm to improve tracking accuracy. During the tracking process, the target model updates based on changes in the molten metal region across frames. Experimental tests confirm that this tracking method meets practical requirements, effectively addressing key challenges in molten metal tracking and providing reliable support for the dross removal process.
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