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Anomaly detection in periodic motion scenes based on multi-scale feature Gaussian weighting analysis

机译:基于多尺度的周期性运动场景中的异常检测,具有高斯加权分析

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摘要

Anomaly monitoring of production line processing equipment based on machine vision is an important method for ensuring its efficient and stable operation. However, problems related to dynamic scenes, accidental and non-transcendental anomalies, image vulnerability to the severe vibrations of machining equipment, and difficulty in accepting the missing detection are significant obstacles to abnormality monitoring in the machining process. A periodic motion scene decomposition method is presented in this paper to solve dynamic scenes, occasional anomalies, severe vibrations, and other issues. Through optimization of the morphological structural elements, the feature points of the 'abnormality' region are obtained, and a Gaussian weighting formula is derived to detect the anomaly and improve the accuracy of detection. This method, which is verified by experiments, effectively overcomes problems related to the machining process and achieves good detection results.
机译:基于机器视觉的生产线加工设备的异常监测是确保其高效稳定运行的重要方法。 然而,与动态场景,意外和非超越异常,对加工设备严重振动的图像脆弱性有关的问题,以及接受缺失检测的困难是加工过程中异常监测的显着障碍。 本文提出了周期性运动场景分解方法,以解决动态场景,偶尔异常,严重振动等问题。 通过优化形态结构元素,获得“异常”区域的特征点,得到高斯加权公式以检测异常并提高检测的准确性。 通过实验验证的这种方法有效地克服了与加工过程相关的问题,并实现了良好的检测结果。

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