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Automatic Vehicle Detection and Driver Identification Framework for Secure Vehicle Parking

机译:自动车辆检测和驾驶员识别框架,用于安全车辆停车

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In recent times, automatic face recognition algorithms are playing a key role in several security applications. In this paper, we develop a framework for enhancing the security of vehicle parking spaces. The proposed framework can be divided in to three separate steps. In first step, a vehicle in the input image is spotted. In second step, driver face is located. In final step, a robust face recognition algorithm identifies the driver by comparing the face image with face images in a database. On successful identification of the driver face, vehicle is allowed to enter in parking area. To detect vehicle and face(s), we use Adaptive Boosting algorithm and Haar-like features, while driver face identification algorithm uses Eigenfaces for feature selection and Euclidian distance for classification. To test the face identification, we simulate a challenging situation where only a single facial image of a driver is available in the database and four face images in different poses are used for testing. Simulation results show very high detection and identification results regardless of the facial pose variation. The results demonstrate the feasibility of developed framework to be deployed in any public vehicle parking area.
机译:最近,自动面部识别算法在若干安全应用程序中发挥着关键作用。在本文中,我们开发了一个提高车辆停车位安全的框架。建议的框架可以分为三个单独的步骤。在第一步中,发现输入图像中的车辆。在第二步中,驾驶员面临。在最终步骤中,通过将面部图像与数据库中的面部图像进行比较,稳健的面部识别算法识别驱动器。在成功识别驾驶员面前,允许车辆进入停车区。为了检测车辆和面部,我们使用自适应升压算法和类似哈尔样功能,而驱动器面部识别算法使用特征选择和欧几里德距离进行分类。为了测试面部识别,我们模拟了一个具有挑战性的情况,其中驾驶员的单个面部图像可在数据库中可用,并使用不同姿势的四个面部图像进行测试。仿真结果显示出非常高的检测和识别结果,无论面部姿势变化如何。结果表明,发达框架的可行性部署在任何公共车辆停车区。

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