Opencv in Smart Parking Space Allocation and Management

K. Venkatesan
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Abstract

In today’s world, the quantity of cars on the road remains steadily rising at a quickening pace. Due to the growing sum of automobiles on the road also the imperfect number of parking spaces, it can be a pain and a waste of time to look for a parking spot. This is because there are fewer parking spots than there are cars. The upshot of this is traffic congestion on the roads. According to studies that were carried out in this region, motorists typically spend 15 minutes driving about in search of a parking spot and cover a distance of 0.5 miles while travelling at a speed of 10 mph. The use of intelligent parking solutions has the potential to significantly cut down on the severity of these difficulties. Because it requires a large number of sensors to be installed at each parking lot, the traditional method is not only expensive but also time-consuming and labour-intensive. The results of this study present a smart parking classification that is based on image dispensation and may be utilised in a number of scenarios, including open parking lots, parking garages with many levels, and other similar places. In order to ascertain whether or not a parking spot in the gathered video is occupied, the proposed design for the system utilises a combination of edge detection and coordinate bound pixel sections. In addition to that, it functions as an illustration of the process of transforming text into images. Tesseract is utilised whenever an image is analysed in order to extract the text contained within it. It is possible to modify the strength of the image processing so that each photograph experiences precisely the amount of processing that is necessary to provide the highest quality text results.
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Opencv在智能车位分配与管理中的应用
在当今世界,道路上的汽车数量仍在以更快的速度稳步增长。由于道路上的汽车数量不断增加,停车位的数量也不完善,寻找停车位可能是一种痛苦和浪费时间。这是因为停车位比汽车少。这样做的结果是道路上的交通堵塞。根据在该地区进行的研究,开车的人通常要花15分钟寻找一个停车位,以每小时10英里的速度行驶0.5英里。智能停车解决方案的使用有可能显著降低这些困难的严重性。由于需要在每个停车场安装大量的传感器,传统的方法不仅成本高,而且耗时费力。本研究的结果提出了一种基于图像分配的智能停车分类,可用于多种场景,包括开放式停车场、多层停车场和其他类似场所。为了确定采集到的视频中是否有停车位被占用,提出的系统设计采用边缘检测和坐标绑定像素截面相结合的方法。除此之外,它还可以作为将文本转换为图像的过程的说明。每当分析图像以提取其中包含的文本时,就会使用Tesseract。可以修改图像处理的强度,以便每张照片都能精确地进行必要的处理,以提供最高质量的文本结果。
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