基于语义智能理解的自动绘画色彩匹配技术

Jiayin Zhang
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引用次数: 0

摘要

喷漆配色技术被广泛应用于产品的生产和印刷过程中。传统的涂装配色已无法满足市场需求。基于此,以现有语义智能理解系统下的大规模语料库为知识源,构建了计算机自动绘画配色模型。构建了计算机自动绘画配色模型。通过案例研究,解决了查询意图不明确、系统检索词不匹配、同义词和多义词等不确定因素导致的返回错误等问题。这为语义智能理解和自动绘画配色技术的应用提供了新思路。实验结果表明,研究采用的方法的精确度、召回率和 F1 分别为 0.8639、0.8026 和 0.8309,明显优于常用方法。这表明所提出的基于语义智能理解的自动绘画色彩匹配技术具有较高的性能,能有效满足绘画色彩匹配的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated painting color matching technology based on semantic intelligence understanding
Painting color matching technology is widely used in the production and printing process of products. Traditional painting and color matching have been unable to meet market demands. Based on this, a large-scale corpus under the existing semantic intelligent understanding system is used as the knowledge source. The computer automated painting color matching model is constructed. It is applied in case studies to address issues such as unclear query intentions, mismatched system retrieval terms, and return errors caused by uncertain factors such as synonyms and polysemy. This provides new ideas for the application of semantic intelligence understanding and automated painting color matching technology. The experimental results showed that the precision, recall, and F1 of the method used in the research were 0.8639, 0.8026, and 0.8309, respectively, significantly superior to commonly used methods. This indicates that the proposed automated painting color matching technology based on semantic intelligent understanding has high performance, which can effectively meet the painting color matching requirements.
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