基于图像的深度学习改进位置识别

R. R. Slavescu, L. Szakacs
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引用次数: 0

摘要

当我们依靠GPS系统在城市内导航时,可能会出现定位错误,特别是在经过十字路口或由于高楼大厦而信号不好的地区时。为了解决这个问题,我们研究了一种新的导航方法,基于通过深度学习识别位置。我们在街道图像上训练了两个卷积神经网络,然后用它们来进行位置识别。第一个神经网络负责识别街道,而第二个神经网络负责识别我们所在的街道路段。街道识别准确率为99.70%,路段识别准确率为96.02%。结果表明,在概念验证层面,卷积神经网络能够使用图像准确识别位置,这可以用于补充GPS定位系统。
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Towards Improving Location Identification by Deep Learning on Images
When we rely on GPS systems for navigating inside cities, localization errors might arise, especially when passing crossroads or in areas with bad signal due to high buildings. To address this, we investigated a new navigation method, based on identifying location through Deep Learning. We trained two Convolutional Neural Networks on street images, then used them for location recognition. The first neural network is responsible to identify the street, while the second one to identify the segment of the street we are on. We have obtained 99.70% accuracy for street recognition and 96.02% for segment recognition. The results show that, at a proof-of-concept level, the Convolutional Neural Networks are able to accurately identify the location using images, which could be used for complementing the GPS localization systems.
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