2022
DOI: 10.11834/jrs.20209228
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Automatic extraction of urban road boundaries using diverse LBP features

Abstract: DeepLabv3+语义分割模型的济南市防尘绿网提取及时空变化分析Urban green plastic cover extraction and spatial pattern changes in Jinan city based on DeepLabv3+ semantic segmentation model

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Cited by 3 publications
(2 citation statements)
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“…The midpoint of the line connecting the head and tail of the track points is chosen as the base point for rotation, while maintaining the line's parallelism to the horizontal axis of the grid coordinates. This coordinate rotation guarantees the utmost alignment between the grid division and the road boundary's orientation [9] , facilitating the acquisition of data points that preserve the linear attributes of the road surface. Subsequently, a planar grid projection is executed in order to generate a planar virtual grid that will be used for subsequent grid thinning.…”
Section: Pavement Point Grid Thinningmentioning
confidence: 99%
“…The midpoint of the line connecting the head and tail of the track points is chosen as the base point for rotation, while maintaining the line's parallelism to the horizontal axis of the grid coordinates. This coordinate rotation guarantees the utmost alignment between the grid division and the road boundary's orientation [9] , facilitating the acquisition of data points that preserve the linear attributes of the road surface. Subsequently, a planar grid projection is executed in order to generate a planar virtual grid that will be used for subsequent grid thinning.…”
Section: Pavement Point Grid Thinningmentioning
confidence: 99%
“…Complex image backgrounds and similarities between roads and certain objects in the image: The presence of cluttered backgrounds in the images, along with high similarity between road features and other objects, poses significant challenges in road extraction tasks. Road extraction methods can be divided into two categories: traditional methods [12] and methods developed based on various deep learning frameworks [13]. Traditional methods heavily rely on manually designed features, thereby making it challenging to accurately identify road shape features in images [14][15][16].…”
Section: Introductionmentioning
confidence: 99%