利用迁移学习从卫星图像中识别停车场

Shushant Kumar, Edwin Thomas, Anmol Horo
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引用次数: 0

摘要

随着数字图像处理技术和卷积神经网络的出现,世界已经获得了许多好处,如计算机摄影,生物图像处理,指纹和虹膜识别,仅举几例。计算机视觉与卷积神经网络相结合,使机器具有虚拟智能能力,可以识别和区分基于人眼可能无法感知的几个特征的图像。我们利用这项技术的进步,从停车场的卫星图像中检测空车位和占用车位的数量。我们提出了一系列适合的经典图像处理技术和算法来对卫星停车位图像进行预处理。此外,我们提出了一个卷积神经网络模型,将这些预处理图像作为输入,以97.73%的准确率识别空车位和占用车位。利用神经网络实现目标的潜在效益可以扩展到不同配置的开放式停车位。这是因为在一个给定的开放停车位上,在大量停车位上建立传感器可能是一项繁琐而昂贵的任务。该模型由几个卷积层组成,并使用纠偏线性分类激活函数。
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Identifying Parking Lots from Satellite Images using Transfer Learning
With the advent of digital image processing techniques and convolutional neural networks, the world has derived numerous benefits such as computerized photography, biological Image Processing, finger print and iris recognition, to name a few. Computer vision coupled with convolutional neural networks has attributed machines with a virtual intellectual ability to recognize and distinguish images based on several characteristics that may be impossible for the human eye to perceive. We have exploited this advancement in technology to particular use case of detecting number of empty and occupied parking slots from satellite images of parking lots. We have proposed a befitting sequence of classical image processing techniques and algorithms to perform pre-processing of satellite images of parking spaces. Moreover, we have proposed a Convolutional Neural Network model that takes as input these preprocessed images and identifies the empty and occupied parking slots with an accuracy of 97.73%. The potential benefits of using Neural Networks to realize the objective can be extended to open parking spaces of different configurations. This is due to the fact that establishing sensors over a large number of parking slots over a given open parking space can be a cumbersome and exorbitant task. The proposed model comprises of few convolutional layers and uses Rectified Linear Classification activation function.
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