Colorimetric System Based on Android Smartphone: Study Case of Total Chlorine Level Prediction

Agnes Diza Fahira, A. H. Saputro
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Abstract

Colorimetric is a system used to measure and describe color. Several previous studies have successfully implemented this system using a smartphone camera for image acquisition of test strips. But unfortunately, most of these studies still transfer image data manually to a computer for processing. In this study, the colorimetric system applied to predict the value of total chlorine levels was made as an Android application. The application can take a picture and directly get results on the smartphone screen. This makes the system work more portable than previous studies. The application is made in a client-server architectural style with RESTful API communication and has two servers, one server is used to transfer images and the other is used to process images into total chlorine values. The application's success rate to reach the two servers is 100%, with the average time required is 2.58 seconds to reach the upload server and 2.68 seconds to reach the computational server. The evaluation results of the regression model used in the application are 0.31 to 0.13 RMSE. These results indicate that the regression model, Artificial Neural Network with Levenberg-Marquardt function, can be used for total chlorine levels prediction system on test strip based on colorimetric.
基于Android智能手机的比色系统:总氯水平预测研究案例
比色法是一种用来测量和描述颜色的系统。之前的几项研究已经成功地使用智能手机相机实现了该系统,用于测试条的图像采集。但不幸的是,大多数这些研究仍然将图像数据手动传输到计算机进行处理。在本研究中,将用于预测总氯水平值的比色系统制作为Android应用程序。该应用程序可以拍摄照片,并直接在智能手机屏幕上显示结果。这使得该系统比以前的研究更加便携。该应用程序采用客户机-服务器体系结构风格,具有RESTful API通信,并有两个服务器,一个服务器用于传输图像,另一个服务器用于将图像处理为总氯值。应用程序到达两台服务器的成功率为100%,到达上传服务器所需的平均时间为2.58秒,到达计算服务器所需的平均时间为2.68秒。应用中使用的回归模型的评价结果为0.31 ~ 0.13 RMSE。结果表明,基于Levenberg-Marquardt函数的人工神经网络回归模型可用于比色法的试纸总氯含量预测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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