计算机科学
人工智能
色差
计算机视觉
色空间
色彩平衡
颜色校正
彩色视觉
光学(聚焦)
光学
彩色图像
图像处理
图像(数学)
物理
GSM演进的增强数据速率
作者
Yiming Deng,Jiasheng Qiu,Zicheng Xiao,Baojian Tang,Demin Liu,Shuchao Chen,Z. Shi,Xuehui Tang,Hongbo Chen
摘要
The camera function of a smartphone can be used to quantitatively detect urine parameters anytime, anywhere. However, the color captured by different cameras in different environments is different. A method for color correction is proposed for a urine test strip image collected using a smartphone. In this method, the color correction model is based on the color information of the urine test strip, as well as the ambient light and camera parameters. Conv-TabNet, which can focus on each feature parameter, was designed to correct the color of the color blocks of the urine test strip. The color correction experiment was carried out in eight light sources on four mobile phones. The experimental results show that the mean absolute error of the new method is as low as 2.8±1.8, and the CIEDE2000 color difference is 1.5±1.5. The corrected color is almost consistent with the standard color by visual evaluation. This method can provide a technology for the quantitative detection of urine test strips anytime and anywhere.
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