基于深度学习方法的不锈钢板缺陷性能评估

V. Elanangai, Kishorebabu Vasanth
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引用次数: 1

摘要

近十年来,钢材表面缺陷图像的检测与分类一直是计算方法上的一大难题。本研究的目的是对钢的表面缺陷图像进行分类,并利用该计算方法对钢的表面缺陷图像进行分类,以评估钢的表面质量,并测量钢的性能指标。提出了基于分数阶Jaya优化器的深度卷积神经网络(FJO-DCNN)的工作。通过粒子群优化(PSO)的聚类机制生成图像片段,保证了最优片段选择的有效性,从而更准确地检测出钢材表面缺陷图像。然而,有效地选择最优片段来检测钢的表面缺陷区域。本实验是利用NEU-DET数据库进行的。最后,采用该混合算法对结果进行了验证,取得了较好的性能值。所提出的工作成果在FJO-DCNN中对钢材表面缺陷图像分别计算出精度、灵敏度和特异性的最佳值。
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Performance Evaluation of Stainless Steel Plate Defects Using Deep Learning Approach
Over the past decade, the detection and classification of Steel surface defect image has been a great challenge in computational methodology. This research work aims at classify the Steel surface defect image which can be used to assess quality of steel surface and also measure the performance metrics using this computational methodology. The Proposed work based on Fractional Jaya Optimizer-based Deep Convolutional Neural Network (FJO-DCNN). The segments are generated through the clustering mechanism named Particle Swarm Optimization (PSO), which ensure the effectiveness of optimal segment selection that yields to detect Steel surface defect image more accurately. However, the optimal segments are effectively selected that yield to detect the Steel surfacedefect regions. This experimentation is carried out using the NEU-DET database. Finally, the results are carried out by using this hybrid algorithm and attained the better performance value. The proposed work achieves in FJO-DCNN for Steel surface defect image computed the best values for accuracy, sensitivity and specificity respectively.
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