Grain Surface Simulator to Averiguate the Overlapping and Noise Problems on Computer Vision Granullometry of Fertilizers

Douglas A. Goulart, N. D. F. Traversi, J. C. O. Mendonça, R. N. Rodrigues, E. Estrada, Paulo L. J. Drews-Jr, Vinícius M. Oliveira, S. Botelho
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引用次数: 1

Abstract

The production of food for all the population in the world became the biggest concern. The population continues to grow and the number of farmable lands has been decreasing. To make the lands more productive, fertilizers are used on a larger scale. To guarantee the quality of the product, particle size analysis are made by mechanical sieving. With the time, the wear-out of the sieving in the fertilizer industry the results of the particle size analysis will be erroneous. So the computer vision appears as an alternative that is non-invasive and less time-consuming. In this context, this paper has the objective to develop a grain surface simulator capable of generating virtual images with overlapping grains, since there is a difficulty to obtain annotated data of images of fertilizers. In order to validate the proposed simulator using a DIP algorithm, noises are added in the virtual images to compare with the reality in the industry, to show how well the particle size analysis with computer vision were handled towards adversities. The results of the overlapping analysis show that when the virtual image has a fewer number of grains, the DIP algorithm can identify the majority of grains, consequently with less error in the particle size analysis. Different noises, at different intensities, have their effects analyzed on the algorithm. As the analyzes in this study match with the reality showing the consequences, tendencies, and errors of the overlapping of grains and noises in the images, the simulator developed here matches with reality and is extremely useful to facilitate the study of complex cases of application of visual computing and digital image processing in particle size analysis of fertilizers.
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利用颗粒表面模拟器解决计算机视觉粒度测量中的重叠和噪声问题
世界上所有人口的粮食生产成为最大的问题。人口持续增长,耕地数量不断减少。为了使土地更多产,化肥的使用规模更大。为保证产品质量,采用机械筛分进行粒度分析。随着时间的推移,化肥行业中筛网的磨损,其粒度分析结果会出现误差。因此,计算机视觉作为一种非侵入性和更节省时间的替代方案出现了。在此背景下,由于难以获得肥料图像的注释数据,本文的目标是开发一种能够生成具有重叠颗粒的虚拟图像的谷物表面模拟器。为了使用DIP算法验证所提出的模拟器,在虚拟图像中添加了噪声,以与行业中的现实进行比较,以显示计算机视觉粒度分析在逆境中的处理效果。重叠分析结果表明,当虚拟图像颗粒数量较少时,DIP算法可以识别大部分颗粒,从而在粒度分析中误差较小。分析了不同强度的噪声对算法的影响。由于本研究的分析与现实相吻合,显示了图像中颗粒和噪声重叠的后果、趋势和误差,因此本研究开发的模拟器与现实相吻合,对于可视化计算和数字图像处理在肥料粒度分析中的应用的复杂案例的研究非常有用。
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