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Real-Time Parking Lot Occupancy Detection System with VGG16 Deep Neural Network using Decentralized Processing for Public, Private Parking Facilities

机译:使用分散处理公共停车设施与VGG16深神经网络的实时停车位检测系统

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Efforts have been taken to develop an efficient image-based parking occupancy detection system employing the camera systems (CCTV) pre installed for security purposes. The present detection system has experienced the problem of identifying the subject with high accuracy and applicability in real time environments. A transfer learning methodology where CNN’s feature extraction was used with binary classifier has proved to provide optimum accuracy. This paper proposes a decentralized system to detect the occupancy status of a parking slot from the CCTV video footage using VGG16 CNN architecture for feature extraction followed by binary classification to detect vacant or occupied spaces. To deliver a complete parking solution, the model has been tested on Live CCTV footages collected from existing parking slots and have provided a complete integrated system that allows real time availability check and booking of parking slots. This paper provides a detailed explanation of the execution of the above system. The performance efficiency and detection are improved by testing the designed model on two datasets Pklot and CNRPark, CNRParkEXT comprising daylight images with multiple weather conditions. The proposed technique is compared with the current state of the art implementations [1],[2]. The dataset has been developed to test the model under low intensity light conditions. With significant accuracy and high-performance throughput observed, the proposed system can be effectively implemented at the commercial level.
机译:已经采取努力开发有效的基于图像的停车占用检测系统,采用相机系统(CCTV)预先安装的安全目的。本检测系统在实时环境中经历了具有高精度和适用性的问题的问题。已经证明了具有二进制分类器的CNN特征提取的转移学习方法,以提供最佳精度。本文提出了一个分散的系统,用于使用VGG16 CNN架构从CCTV视频镜头中检测停车槽的占用状态,用于使用二进制分类来检测空置或占用空间。为了提供完整的停车解决方案,该模型已在现有停车槽收集的现场CCTV镜头上进行了测试,并提供了一个完整的集成系统,允许实时可用性检查和预订停车槽。本文提供了对上述系统执行的详细说明。通过在两个数据集PKLOT和CNRPARK上测试设计的模型,CNRPARKXT,CNRPARKXT,包括具有多个天气条件的日光图像,改善了性能效率和检测。将所提出的技术与现有技术的最新状态进行比较[1],[2]。已经开发了数据集以在低强度光条件下测试模型。具有显着的精度和高性能的产量,所提出的系统可以在商业水平上有效实施。

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