卷积神经网络在城市环境停车位分类中的增强

IF 3.1 Q2 ENVIRONMENTAL SCIENCES
S. Rahman, M. Ramli, F. Arnia, R. Muharar, M. Ikhwan, S. Munzir
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引用次数: 3

摘要

背景和目标:车辆数量的增加产生了一些负面影响,包括交通拥堵、空气污染、噪音水平和停车位的可用性。司机寻找停车位会造成交通堵塞和空气污染。目前提供的解决方案是开发智能停车系统来克服这些问题。智能停车系统在停车区提供停车可用性信息功能,以解决停车位的拥堵问题。深度学习是解决停车位分类问题的一种成功方法。众所周知,这种方法需要大量的计算过程。本研究的目的是修改卷积神经网络的架构,卷积神经网络是深度学习的一部分,用于对停车位进行分类。假设对卷积神经网络架构的修改可以提高智能停车系统处理停车可用性信息的工作效率。方法:由于计算机视觉技术和算法的快速发展,研究重点是开发使用摄像头传感器的停车位分类技术。输入图像具有3x3个维度。第一卷积层接受输入图像并将其转换为56x56维。第二卷积层以与第一层相同的方式构成,其尺寸为25x25。第三个卷积层采用了一个3×3的滤波器矩阵,其填充量高达15,并将其转换为10x10维。第四层的组成方式与第三层相同,但增加了最大池化。测试中使用的软件是带有Python框架的Python。调查结果:提出的架构是高效停车网络或高效停车网。可以看出,与其他一些架构相比,该架构在对停车位进行分类方面更有效,例如迷你亚历克斯网络(mAlexnet)和带照明校正的格拉斯曼深度堆叠网络(GDSN-IC)。EfficientParkingNet无法通过Yolo移动网络(Yolo+MobileNet)的准确性。此外,Yolo+MobileNet的参数太多,无法在低计算设备上使用。选择EfficientParkingNet作为一种根据使用需求量身定制的轻量级架构。EfficientParkingNet的轻量级计算架构可以提高用户获取停车可用性信息的速度。结论:与mAlexnet相比,EfficientParkingNet在确定停车位可用性方面更有效,但仍无法与Yolo+MobileNet相匹配。根据参数数量,EfficientParkingNet使用了mAlexnet一半的参数数量,并且比Yolo+MobileNet小得多。高效停车网在国家研究委员会停车数据集的准确率为98.44%,高于其他架构。EfficientParkingNet适用于具有低计算设备的停车系统,如Raspberry Pi,因为参数数量较少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancement of convolutional neural network for urban environment parking space classification
BACKGROUND AND OBJECTIVES: The increase in the number of vehicles has several negative impacts, including traffic congestion, air pollution, noise levels, and the availability of parking spaces. Drivers looking for parking spaces can cause traffic jams and air pollution. The solution offered at this time is the development of a smart parking system to overcome these problems. The smart parking system offers a parking availability information feature in a parking area to break up congestion in the parking space. Deep learning is a successful method to solve parking space classification problems. It is known that this method requires a large computational process. Th aims of this study are to modified the architecture of Convolutional Neural Networks, part of deep learning to classify parking spaces. Modification of the Convolutional Neural Networks architecture is assumed to increase the work efficiency of the smart parking system in processing parking availability information.METHODS: Research is focusing on developing parking space classification techniques using camera sensors due to the rapid advancement of technology and algorithms in computer vision. The input image has 3x3 dimensions. The first convolution layer accepts the input image and converts it into 56x56 dimensions. The second convolution layer is composed in the same way as the first layer with dimensions of 25x25. The third convolution layer employs a 3 x 3 filter matrix with padding of up to 15 and converts it into 10x10 dimensions. The fourth layer is composed in the same way as the third layer, but with the addition of maximum pooling. The software used in the test is Python with a Python framework.FINDINGS: The proposed architecture is the Efficient Parking Network or EfficientParkingNet. It can be shown that this architecture is more efficient in classifying parking spaces compared to some other architectures, such as the mini–Alex Network (mAlexnet) and the Grassmannian Deep Stacking Network with Illumination Correction (GDSN-IC). EfficientParkingNet has not been able to pass the accuracy of Yolo Mobile Network (Yolo+MobileNet). Furthermore, Yolo+MobileNet has so many parameters that it cannot be used on low computing devices. Selection of EfficientParkingNet as a lightweight architecture tailored to the needs of use. EfficientParkingNet's lightweight computing architecture can increase the speed of information on parking availability to users.CONCLUSION: EfficientParkingNet is more efficient in determining the availability of parking spaces compared to mAlexnet, but still cannot match Yolo+MobileNet. Based on the number of parameters, EfficientParkingNet uses half of the number of parameters of mAlexnet and is much smaller than Yolo+MobileNet. EfficientParkingNet has an accuracy rate of 98.44% for the National Research Council parking dataset and higher than other architectures. EfficientParkingNet is suitable for use in parking systems with low computing devices such as the Raspberry Pi because of the small number of parameters.
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来源期刊
CiteScore
7.90
自引率
2.90%
发文量
11
审稿时长
8 weeks
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