基于图像识别的中国和澳大利亚美利奴羊毛纤维的智能识别

Xiao Bo Wang, Zhan Xia Chen, Li Jing Wang, Xue Lei Shan, Zi Li Xie, Yun Long Shi, Xiao Ming Qian
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引用次数: 0

摘要

为了促进羊毛产业的可持续发展,保护消费者的合法权益,快速识别同类羊毛的原产国至关重要。本研究提出了一种计算机图形识别训练模型,利用中值滤波和维纳滤波技术有效降低羊毛纤维原始图像中的噪声。该模型采用支持向量机作为分类器,并集成了多项式核函数,可快速准确地识别中国和澳大利亚的美利奴羊毛纤维。实验结果表明,经过图像识别训练后,该模型对中国和澳大利亚美利奴羊毛纤维的综合精确识别率高达 92.5%,有效区分了同类羊毛的产地。这种方法不仅为识别同类羊毛的产地提供了有价值的参考,而且有望规范羊毛纤维材料市场,确保消费者对羊毛产品的信心。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Identification of Chinese and Australian Merino Wool Fibers Based on Image Recognition
In order to promote the sustainable growth of the wool industry and protect consumers' legitimate rights, rapid identification of the country of origin for wool of the same type is deemed crucial. This research presents a computer graphic recognition training model that utilizes median and Wiener filtering techniques to effectively reduce noise in the raw wool fiber images. Employing a support vector machine as the classifier and integrating a polynomial kernel function, this model achieves swift and accurate identification of Chinese and Australian Merino wool fibers. Experimental results underscore that following image recognition training, the model attains an impressive 92.5% comprehensive and precise identification rate for Chinese and Australian Merino wool fibers, effectively distinguishing the origin of wool from the same category. This approach not only provides a valuable reference for identifying the origin of similar wool types but also holds the potential to standardizing the wool fibre material market and assuring the consumer’s confidence on wool products.
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