Selecting the Function of Color Space Conversion RGB / HSL to Wavelength for Fluorescence Intensity Measurement on Android Based Applications

Ronaldo Kristianto, Farida Dwi Handayani, A. Wibowo
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Abstract

Molecular biology-based tests are widely used to monitor various activities, such as molecular interaction dynamics, cell health, and in other health studies. At present molecular biology detection technology is widely available in city center laboratories, but this does not happen in small clinics and in remote areas. For this reason, a method called point of care (POC) was developed, which is a medical diagnostic test near a place of care that can provide fast results. Fluorescence is one method of labeling samples that are widely used in point of care activities. Recent research has detected fluorescence with quite good results, but the detection done is mostly based on RGB color space without regard to wavelength. In fact, wavelength is an important factor in fluorescence detection where using wavelength, the detection results can show the level of intensity of the light produced by the fluorescence sample. In this research, the curve fitting function is created which can convert the RGB value in an image or image to a wavelength value. From 3 fitting curves with RGB, HSV, and hue data, the function with the smallest mean squared error and the smallest root mean squared error will be selected. Next, using the best fitting curve function will read the wavelength value of a fluorescence sample photo. The results of this experiment show that the combination of the use of the fitting curve function obtained from HSV data and the fitting curve obtained from hue produces the most optimal error results, with a mean squared error (MSE) value of 367,373, compared to the MSE results of the RGB fitting curve with value 3908.1, HSV fitting curve with a value of 593.6, and hue fitting curve which is worth 1456.62.
基于Android应用的荧光强度测量颜色空间转换RGB / HSL到波长的选择功能
基于分子生物学的测试被广泛用于监测各种活动,如分子相互作用动力学、细胞健康和其他健康研究。目前分子生物学检测技术在城市中心实验室广泛应用,但在小诊所和偏远地区尚未实现。因此,开发了一种称为医疗点(POC)的方法,即在医疗点附近进行医疗诊断测试,可以快速提供结果。荧光是一种标记样品的方法,广泛应用于护理点活动。近年来的研究已经对荧光进行了检测,取得了不错的效果,但检测大多是基于RGB色彩空间,不考虑波长。事实上,波长是荧光检测中的一个重要因素,使用波长,检测结果可以显示荧光样品产生的光的强度水平。本研究创建曲线拟合函数,将图像或图像中的RGB值转换为波长值。从RGB、HSV和hue数据的3条拟合曲线中,选择均方误差最小和均方根误差最小的函数。接下来,使用最佳拟合曲线函数将读取荧光样品照片的波长值。实验结果表明,与RGB拟合曲线3908.1、HSV拟合曲线593.6、色相拟合曲线1456.62的拟合曲线相比,结合使用HSV数据拟合曲线函数与色相拟合曲线得到的拟合曲线得到的误差结果最优,均方误差(MSE)值为367373。
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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