基于圆斑点检测的停车场状态识别

Mohammad Nasrul Mubin, Hendra Kusuma, M. Rivai
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引用次数: 2

摘要

停车用户需要有关停车位可用性的信息,特别是在大型停车场。这些信息将帮助用户节省搜索时间、精力和燃料(金钱)。目前车位检测方法分为图像检测和非图像检测两种。非图像检测并不完全好,甚至有些实现需要拆除道路或建筑物。此外,非图像检测所需的维护费用较高,因此本研究选择图像检测方法。该系统的设计首先将图像转换为HSV色彩空间。然后在HSV通道V上对转换图像进行CLAHE处理。下一步是在停车场车位区域用透视变换变换图像尺寸。变换后的图像覆盖了将被检测到的停车位。然后,从变换图像中,利用每个车位的辅助圆检测每个车位的状态。然后,这个过程的结果显示为停车位用户的可用性信息。该系统的鉴定成功率为99.28%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Parking Lot Status Using Circle Blob Detection
Information on the availability of parking spaces, especially in large parking areas, is needed by parking users. This information will help users in terms of saving search time, effort, and fuel (money). Currently, parking space detection methods are divided into image detection and non-image detection methods. Non-image detection is not completely good, even some of its implementations require demolition of roads or buildings. In addition, the maintenance required for non-image detection can be more expensive, so the image detection method was chosen in this study. The system is designed by first converting the image into the HSV color space. The conversion image is then given the CLAHE process on channel V of HSV. The next step is to transform the image dimensions with perspective transformation in the area which is the parking lot slots. The transformed image covers the parking slots that will be detected. Then, from the transformation image, the status of each parking lot slot is detected by utilizing the auxiliary circle in each slot. The results of this process are then shown as the availability information for parking space users. The results of the identification trial of this system showed a great success rate of 99.28%.
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