Analysis of System Development Methodology with Comparison of Payroll Information System Software Model Using Waterfall Development Model, Rapid Application Development (RAD) Model and Agile Model

Arif Riyandi, Tony Widodo, Shofwatul Uyun
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引用次数: 1

Abstract

Objective: Automatic identification is carried out with the help of a tool that can take an image of road conditions and automatically distinguish the types of road damage, the location of road damage in the image and calculate the level of road damage according to the type of road damage.Design/method/approach: Identification of damaged roads usually uses manual RCI system which requires high cost. In this study, a comparison framework is proposed to determine the performance of the image pre-processing model on the image classification algorithm.Results: Based on 733 image data classified using the CNN method from 4 models of pre-processing stages, it can be concluded that training from grayscale images produces the best level of accuracy with a training accuracy value of 88% and validation accuracy reaching 99%.Authenticity/state of the art: Testing of 4 pre-processing models against the classification algorithm used as a comparison resulted in the best algorithm/method for managing road images.
系统开发方法分析及使用瀑布开发模型、快速应用开发模型和敏捷开发模型的工资信息系统软件模型的比较
目的:自动识别是借助一种工具进行的,该工具可以拍摄路况图像,自动区分道路损伤类型,图像中道路损伤的位置,并根据道路损伤类型计算道路损伤级别。设计/方法/途径:破损道路的识别通常采用人工RCI系统,成本较高。在本研究中,提出了一个比较框架来确定图像预处理模型对图像分类算法的性能。结果:基于预处理阶段4个模型中使用CNN方法分类的733张图像数据,可以得出灰度图像训练的准确率最高,训练准确率达到88%,验证准确率达到99%。真实性/技术水平:将4种预处理模型与分类算法进行比较,得出管理道路图像的最佳算法/方法。
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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24 weeks
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