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Assessing image segmentation algorithms for sky identification in GNSS

机译:评估GNSS中用于天空识别的图像分割算法

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In order to improve the accuracy of user's position solution using Global Navigation Satellite System (GNSS) in urban canyons, it is important to know whether a satellite's signal is obstructed by surrounding buildings. This can be accomplished by using an upward-facing camera and segmenting the image into sky and non-sky. This paper evaluates the Otsu, Mean Shift, Graph cut and HMRF-EM-image image segmentation algorithms for this purpose. Since some algorithms provide two or more categories, segmentation is followed by k-means clustering techniques to yield only two categories; sky and non-sky. The algorithms are tested using images taken using an upward-facing camera at roughly the same locations in different weather conditions: cloudy and sunny. Result shows that, when images are appropriately adjusted, the Otsu method overcomes the three other algorithms in terms of the percentage of sky accurately segmented and is also more computationally efficient. Experiment was also perform in Calgary downtown to show the effect of segmentation on the GNSS accuracy. Results show that, when obstructed satellites are removed, the RMS of the residuals decreases significantly compare to when all satellites are used.
机译:为了提高在城市峡谷中使用全球导航卫星系统(GNSS)的用户位置解决方案的准确性,了解卫星信号是否被周围的建筑物阻挡很重要。这可以通过使用朝上的相机并将图像分为天空和非天空来实现。为此,本文对Otsu,Mean Shift,Graph Cut和HMRF-EM图像图像分割算法进行了评估。由于某些算法提供两个或多个类别,因此在分段之后采用k均值聚类技术仅产生两个类别。天空和非天空。使用朝上相机在不同天气条件下大致相同的位置(多云和晴天)拍摄的图像对算法进行测试。结果表明,在对图像进行适当调整后,Otsu方法在准确分割的天空百分比方面克服了其他三种算法,并且在计算效率上也更高。还在卡尔加里市中心进行了实验,以显示分割对GNSS准确性的影响。结果表明,与使用所有卫星时相比,当移除受干扰的卫星时,残差的RMS显着降低。

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