基于reunet和HMM的外螺纹测量

Zijie Li, Kun Zhang, Jiangguo Wu, Ping Lu
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引用次数: 3

摘要

有许多测量螺纹的方法。此外,这些螺纹测量方法需要手动分割感兴趣的区域(螺纹区域),并且这些方法容易受到环境的干扰(例如灰尘,铁屑,油污等),导致测量结果不准确。提出了一种基于ResUnet和隐马尔可夫模型(HMM)的外线程测量方法。首先,提出了一种基于reunet的线程边缘识别方法,该方法省去了在复杂环境下对线程区域进行标定的过程,实现了线程边缘的识别。其次,利用HMM对螺纹边缘点进行分类,使螺纹部件在测量时可以任意角度放置,简化了测量步骤,并根据分类结果计算螺纹参数;最后,我们用自己的数据集对我们的方法进行了评估,结果表明,测量值与标准值的差异在0.01 mm以内。
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External Thread Measurement Based on ResUnet and HMM
There are many methods of thread measurement. In addition, these thread measurement methods require manual segmentation of regions of interest (threaded area) and These methods are easily disturbed by the environment (e.g. dust, iron filings, oil stains, etc.), resulting in inaccurate measurement results. This paper proposes an external thread measurement method based on ResUnet and hidden Markov model (HMM). First, we propose a ResUnet-based thread edge recognition method that omits the process of calibrating the threaded area and identify the thread edge in a complex environment. Secondly, we use HMM to classify the thread edge points so that the threaded parts can be placed at any angle during the measurement, simplifying the measurement steps and calculating the thread parameters based on the classification results. Finally, we evaluated our method using our own dataset, and the results showed that the difference between the measured value and the standard value is within 0.01 mm.
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