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Feature-based transfer learning to train a novel cotton imaging system

机译:基于特征的转移学习培训一种新型棉花成像系统

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In recent years, the transfer learning framework has gained increasing interest in the machine learning community. Fundamentally, this framework aims to train a new target system using existing data or knowledge from one or more previous source systems. By extending the theory of standard machine learning techniques, this framework allows us to solve many challenging problems directly and intuitively. This paper presents an application of this framework to train a novel target system whose goal is to measure a cotton fiber property named maturity using image analysis. In addition, this paper also presents a feature-based supervised domain adaptation approach named G2DA which performs mapping using the generalized (kernel) discriminant analysis. After domain adaptation is complete, model estimation is performed easily using traditional machine learning algorithms. Specifically, RANSAC-based regression is performed to learn a maturity function for the target system. This function is then used to estimate the maturity of any newly scanned fiber. Validation studies performed show good results for our overall approach.
机译:近年来,转让学习框架在机器学习界上获得了越来越兴趣的兴趣。从根本上,该框架旨在培训使用一个或多个先前源系统的现有数据或知识的新目标系统。通过扩展标准机器学习技术理论,该框架使我们能够直接和直观地解决许多具有挑战性的问题。本文介绍了本框架的应用,以培训一种新的目标系统,其目标是使用图像分析来测量命名为成熟度的棉纤维属性。此外,本文还提出了一种名为G2DA的基于特征的监督域适应方法,其使用广义(内核)判别分析执行映射。在域自适应完成后,使用传统的机器学习算法轻松执行模型估计。具体地,执行基于RANSAC的回归以学习目标系统的成熟度函数。然后使用该功能来估计任何新扫描光纤的成熟度。验证研究表现出我们整体方法的良好结果。

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