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An Effective Segmentation and modified Ada Boost CNN based classification model for Fabric Fault Detection system

机译:结构故障检测系统的有效分割和修改的ADA增强CNN分类模型

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By rapidly growing the production of fabrics in textile industry, fabric faults are most common slipup in the fabric manufacturing process. Inspection of fabrics and finding defects in the fabrics are too difficult along with the speed of production. Fabric defect detection plays a major role in the quality control in textile industry. The major objective of our proposal is to produce the high quality fabrics in the shortest period of time using machine learning Techniques. By increasing the various data sets in the fabric fault detection, the conventional classification techniques are not able to produce the accuracy on predicting the fault with low inspection time. To improve the accuracy and to predict the fabric defect within the inspection time, we propose An Effective Segmentation and modified Ada Boost CNN based classification model for Fabric Fault Detection System.
机译:通过在纺织工业中迅速生长织物的生产,织物故障在织物制造过程中是最常见的倒塌。在生产速度以及生产​​速度之外,织物的检查和织物中的缺陷太难。织物缺陷检测在纺织业的质量控制中起着重要作用。我们提案的主要目标是在最短的时间内生产高质量的面料,使用机器学习技术。通过增加织物故障检测中的各种数据集,传统的分类技术无法产生预测具有低检查时间的故障的准确性。为了提高准确性和预测检查时间内的织物缺陷,我们提出了一种有效的织物故障检测系统的分割和改进的ADA升压CNN基于基于CNN的分类模型。

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