A Standardized PMML Format for Representing Convolutional Neural Networks with Application to Defect Detection.

IF 0.8 Q4 ENGINEERING, MANUFACTURING
Max Ferguson, Yung-Tsun Tina Lee, Anantha Narayanan, Kincho H Law
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引用次数: 0

Abstract

Convolutional neural networks are becoming a popular tool for image processing in the engineering and manufacturing sectors. However, managing the storage and distribution of trained models is still a difficult task, partially due to the lack of standardized methods for deep neural network representation. Additionally, the interoperability between different machine learning frameworks remains poor. This paper seeks to address this issue by proposing a standardized format for convolutional neural networks, based on the Predictive Model Markup Language (PMML). A new standardized schema is proposed to represent a range of convolutional neural networks, including classification, regression and semantic segmentation systems. To demonstrate the practical application of this standard, a semantic segmentation model, which is trained to detect casting defects in Xray images, is represented in the proposed PMML format. A high-performance scoring engine is developed to evaluate images and videos against the PMML model. The utility of the proposed format and the scoring engine is evaluated by benchmarking the performance of the defect detection models on a range of different computational platforms.

Abstract Image

Abstract Image

Abstract Image

卷积神经网络在缺陷检测中的标准化PMML格式。
卷积神经网络正在成为工程和制造领域图像处理的流行工具。然而,管理训练模型的存储和分布仍然是一项艰巨的任务,部分原因是缺乏深度神经网络表示的标准化方法。此外,不同机器学习框架之间的互操作性仍然很差。本文试图通过提出一种基于预测模型标记语言(PMML)的卷积神经网络的标准化格式来解决这个问题。提出了一种新的标准化模式来表示一系列卷积神经网络,包括分类、回归和语义分割系统。为了演示该标准的实际应用,本文以提出的PMML格式表示了一个语义分割模型,该模型被训练用于检测x射线图像中的铸造缺陷。开发了一种高性能的评分引擎,根据PMML模型对图像和视频进行评估。通过在一系列不同的计算平台上对缺陷检测模型的性能进行基准测试来评估所提出的格式和评分引擎的效用。
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来源期刊
Smart and Sustainable Manufacturing Systems
Smart and Sustainable Manufacturing Systems ENGINEERING, MANUFACTURING-
CiteScore
2.50
自引率
0.00%
发文量
17
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