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Fuzzy reasoning based automatic inspection of radiographic welds: weld recognition

机译:基于模糊推理的射线照相焊缝自动检查:焊缝识别

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摘要

A fuzzy reasoning based expert system is developed for the recognition of welds in radiographic images. First, each object in a radiographic image is identified and described with a three-feature vector. Of interest are to distinguish welds from non-weld objects in order to extract welds for further processing, such as, flaws detection. To this end, a fuzzy reasoning method is proposed. The fuzzy rules are extracted from feature data one feature at a time based on a modified fuzzy c-means algorithm. The number of fuzzy terms with ^ overlapping between adjacent terms and the shape of terms are optimized based on the mean squared error criterion. The total number of fuzzy rules is the product of the number of fuzzy terms for each feature. The performance of this optimal set of fuzzy rules is tested with unseen data in terms of accurate rate, false positive rate, and false negative rate. For comparison, selected sets of rules are extracted by varying the number of fuzzy terms for each feature and subsequently tested. The performance of the fuzzy expert system is also found to be better than that of multi-layer perceptron neural networks, if appropriately designed.
机译:开发了一种基于模糊推理的专家系统,用于识别射线图像中的焊缝。首先,用三特征向量识别和描述放射线图像中的每个对象。感兴趣的是将焊缝与非焊接对象区分开,以便提取焊缝以进行进一步处理,例如探伤。为此,提出了一种模糊推理方法。基于改进的模糊c均值算法,一次从特征数据中提取一个特征的模糊规则。基于均方误差标准,对相邻项之间具有^重叠的模糊项的数量和项的形状进行了优化。模糊规则的总数是每个特征的模糊项数量的乘积。使用准确率,误报率和误报率等看不见的数据来测试这套最佳的模糊规则。为了进行比较,通过改变每个特征的模糊项的数量来提取选定的规则集,然后进行测试。如果设计得当,还可以发现模糊专家系统的性能要优于多层感知器神经网络。

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