生锈和未生锈图像的分类:一种机器学习方法

Mridu Sahu, T. Jani, Maski Saijahnavi, Amrit Kumar, U. Chaurasiya, Samrudhi Mohdiwale
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引用次数: 0

摘要

防锈检测对于机器的正常工作和维护是必要的。图像是生锈检测的建议平台之一,即使人类无法到达该区域,也可以检测到生锈。然而,缺乏可用的在线数据库,可以提供相当大的数据集,以确定可以进一步使用的最合适的模型。本文提供了一种使用Perlin噪声的数据增强技术,并进一步对生成的图像进行标准特征(即统计值,熵,以及SIFT和SURF方法)的测试。对两种最广义的分类器naïve贝叶斯和支持向量机进行了识别和测试,获得了对生锈和未生锈图像的分类性能。支持向量机提供了更好的分类精度,这也表明统计学、SIFT和SURF的结合特征能够区分图像。因此,它可以进一步用于检测机器不同部位的锈蚀。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Rusty and Non-Rusty Images: A Machine Learning Approach
Rust detection is necessary for proper working and maintenance of machines for security purposes. Images are one of the suggested platforms for rust detection in which rust can be detected even though the human can't reach to the area. However, there are a lack of online databases available that can provide a sizable dataset to identify the most suitable model that can be used further. This paper provides a data augmentation technique by using Perlin noise, and further, the generated images are tested on standard features (i.e., statistical values, entropy, along with SIFT and SURF methods). The two most generalized classifiers, naïve Bayes and support vector machine, are identified and tested to obtain the performance of classification of rusty and non-rusty images. The support vector machine provides better classification accuracy, which also suggests that that the combined features of statistics, SIFT, and SURF are able to differentiate the images. Hence, it can be further used to detect the rust in different parts of machines.
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