SYSTEM DESIGN FOR CALCUALTING THE NUMBER AND DENSITY OF MOTORCYCLES IN PARKING AREA BASED ON BACKGROUND SUBTRACTION METHOD

Muhammad Yusuf Fadhlan, Auliya Rahmawati, Novita Lestari Anggreini
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Abstract

There are still issues with a number of students parking their vehicles improperly in the parking spaces provided. This causes suboptimal parking capacity due to a lack of information about parking capacity. In recent years, at a certain library, vehicle detection has been implemented using a Gaussian mixture model algorithm using a Raspberry Pi. However, this library does not provide information about the density status of the parking area. Therefore, an information system was created to determine the level of density of the parking area based on the ratio of vehicles entering and exiting compared to the maximum capacity of the parking area. The system uses the Gaussian mixture model algorithm with the machine learning method of background subtraction MOG2, which can calculate the number of vehicles based on the difference between objects and the background of objects, using test data in the form of videos recorded using a camera positioned horizontally to the entrance and exit lanes of the parking area. This research resulted in an accuracy of 89.7% for Video1TA, precision of 93.2%, a crowded parking area density level, and a value of 129.12. Video2TA had a value of 101.08, precision of 100%, and accuracy of 90%, while Video3TA had an accuracy of 35%, precision of 56.7%, and a value of 49.48. The density levels of videos 2 and 3 are the same, indicating that the parking area is still empty. The test results show that the value can affect the system in detecting an object.
基于背景减去法计算停车区摩托车数量和密度的系统设计
一些学生在提供的停车位上乱停乱放车辆的问题依然存在。由于缺乏有关停车容量的信息,这导致停车容量不达标。近年来,某图书馆使用树莓派(Raspberry Pi)通过高斯混合模型算法实现了车辆检测。然而,该图书馆并未提供有关停车区域密度状况的信息。因此,我们创建了一个信息系统,根据进出车辆与停车区最大容量的比率来确定停车区的密度水平。该系统采用了高斯混合模型算法和背景减法 MOG2 机器学习方法,可以根据物体与物体背景之间的差异计算车辆数量,使用的测试数据是使用水平放置在停车场入口和出口车道上的摄像头拍摄的视频。这项研究的结果是,视频 1TA 的准确率为 89.7%,精确度为 93.2%,停车区密度水平拥挤,数值为 129.12。视频 2TA 的值为 101.08,精确度为 100%,准确度为 90%,而视频 3TA 的准确度为 35%,精确度为 56.7%,值为 49.48。视频 2 和视频 3 的密度水平相同,表明停车区仍然是空的。测试结果表明,数值会影响系统对物体的检测。
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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