基于人工智能的油画色彩图像增强识别方法:人工智能模型在环境研究中的应用

Eyain Yao, Marvin White
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引用次数: 0

摘要

由于空气和水环境的污染以及造假问题,油画的鉴定难度很大。因为空气污染和水污染会导致画面受潮、发霉,甚至出现水渍,严重破坏画面的完整性和色彩表现。同时,水中的化学物质也会对油画产生腐蚀作用,进一步破坏画面的色彩和细节。完全依靠专家的传统经验,存在主观性太强的问题。一些有争议的作品很难用理性的鉴定证据说服人,因此有必要探索一种科学有效且可量化的油画真伪鉴定方法。基于此,本文在艺术风格分析和油画形状、颜色、纹理特征提取的基础上,构建了一种基于多特征融合的油画真伪识别方法。将所提方法的识别准确率与现有神经网络的识别准确率进行了比较。结果表明,所提模型的识别率为 73.0%,表现最佳。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Oil painting color image enhancement recognition method based on artificial intelligence: applications of an AI model in environmental research
Due to the pollution of the air and water environment and the problem of forgery, it is difficult to identify the oil painting. The reason is that air pollution and water pollution can lead to moisture, mold, and even water stains on the picture, which will seriously damage the integrity and color performance of the picture. At the same time, chemicals in the water may also have a corrosive effect on the oil painting, further destroying the color and detail of the picture. The problem of relying entirely on the conventional experience of experts is too subjective. Some controversial works are difficult to convince people with rational identification evidence, so it is necessary to explore a scientific and effective and quantify the authenticity of the oil painting identification method. Based on this, This paper constructs an oil painting authenticity identification method based on multi-feature fusion based on the artistic style analysis and feature extraction of oil painting shape, color and texture. The recognition accuracy of the proposed method is compared with that of the existing neural network. The results show that the recognition rate of the proposed model is 73.0%, which is the best performance.
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