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Maximizing the Accuracy of Continuous Quantification Measures Using Discrete PackTest Products with Deep Learning and Pseudocolor Imaging

机译:使用具有深度学习和伪彩色成像功能的离散PackTest产品最大程度地提高连续定量测量的准确性

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摘要

Using the standard colors provided in the instructions, PackTest products can approximate and quickly estimate the chemical characteristics of liquid samples. The combination of PackTest products and deep learning was examined for its accuracy and precision in quantifying chemical oxygen demand, ammonium ion, and phosphate ion using a pseudocolor imaging method. Each PackTest product underwent reactions with standard solutions. The generated color was scanner-read. From the color image, ten grayscale images representing the intensity values of red, green, blue, cyan, magenta, yellow, key black, and L, and the values of a and b were generated. Using the grayscale images representing the red, green, and blue intensity values, 73 other grayscale images were generated. The grayscale intensity values were used to prepare datasets for the ten and 83 (=10 + 73) images. For both datasets, chemical oxygen demand quantification was successful, resulting in values of normalized mean absolute error of less than 0.4% and coefficients of determination that were greater than 0.9996. However, the quantification of ammonium and phosphate ions commonly provided false positive results for the standard solution that contained no ammonium ion/phosphate ion. For ammonium ion, multiple regression markedly improved the accuracy using the pseudocolor method. Phosphate ion quantification was also improved by avoiding the use of an estimated value for the reference solution that contained no phosphate ion. Real details of the measurements and the perspectives were discussed.
机译:使用说明中提供的标准颜色,PackTest产品可以近似并快速估计液体样品的化学特性。使用伪彩色成像方法检查了PackTest产品和深度学习的组合在定量化学需氧量,铵离子和磷酸根离子方面的准确性和精确性。每个PackTest产品都与标准溶液进行反应。产生的颜色被扫描仪读取。从彩色图像中,十个灰度图像分别代表红色,绿色,蓝色,青色,品红色,黄色,黑色和L 的强度值,以及a 的强度值sup>和b 生成。使用代表红色,绿色和蓝色强度值的灰度图像,生成了73个其他灰度图像。灰度强度值用于准备十张和83张(= 10 + 73)图像的数据集。对于这两个数据集,化学需氧量定量均成功完成,其归一化平均绝对误差值小于0.4%,测定系数大于0.9996。但是,对于不包含铵离子/磷酸根离子的标准溶液,铵离子和磷酸根离子的定量检测通常会提供假阳性结果。对于铵离子,多元回归使用伪彩色方法显着提高了准确性。通过避免使用不含磷酸根离子的参比溶液的估计值,还可以改善磷酸根离子的定量。讨论了测量的真实细节和观点。

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