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Motor vehicle path fitting algorithm based on low sampling data

A motor vehicle, low-sampling technology, applied in the field of urban transportation, can solve the problem of poor processing results and achieve high-precision path fitting

Inactive Publication Date: 2020-04-17
江苏欣网视讯软件技术有限公司
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

At present, most path fitting algorithms use local or incremental algorithms, which completely ignore the correlation between adjacent points, and are only suitable for GPS data with a high sampling rate. For signaling data with a low sampling rate, the processing results are poor

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  • Motor vehicle path fitting algorithm based on low sampling data
  • Motor vehicle path fitting algorithm based on low sampling data
  • Motor vehicle path fitting algorithm based on low sampling data

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Embodiment 1

[0047] The present invention provides such as Figure 1-5 A motor vehicle path fitting algorithm based on low sampling data, including the following steps:

[0048] Step S1, read configuration item information, and obtain track data and road network data to be processed;

[0049] Step S2, extracting and storing trajectory data;

[0050] Step S3, preprocessing of trajectory data;

[0051] Step S4, filter the road network data, determine the road type field to be reserved according to the actual situation of the city, and store each road according to geographical information;

[0052] Step S5, selection and storage of trajectory projection points;

[0053] Step S6, define the distribution probability P of the projection point with respect to the source point 1 ,Expressed as The standard deviation σ is selected according to the actual situation;

[0054] Step S7, for the entire trajectory, construct a migration probability matrix for adjacent trajectory points, and calcula...

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Abstract

The invention discloses a motor vehicle path fitting algorithm based on low sampling data. The method comprises steps of S1, reading the configuration item information, and obtaining track data and road network data which need to be processed; S4, filtering the road network data, determining a road type field needing to be reserved according to the actual situation of a city, and storing each roadaccording to the geographic information; S7, for the whole track, constructing a migration probability matrix for adjacent track points, calculating the comprehensive probability between adjacent projection points, and finally obtaining a probability matrix between projection points corresponding to each track point in the whole track; and S8, obtaining a relation graph of the whole track according to the comprehensive probability matrix of the whole track calculated in the S7, and sequentially selecting the projection point with the maximum value as the optimal fitting path of the track. Themethod is advantaged in that the information such as spatial distribution and time consumption is comprehensively considered, the migration probability between adjacent mapping points is calculated on the basis of space analysis at the moment, local optimal probability path selection is carried out, and progressive high-precision path fitting is achieved.

Description

technical field [0001] The invention belongs to the technical field of urban traffic, and in particular relates to a motor vehicle path fitting algorithm based on low sampling data. Background technique [0002] Matching raw signaling data to a digital map or digital road network is often referred to as path fitting. Signaling data has problems such as low sampling rate, poor precision, and irregular ping-pong switching, so it cannot be applied to traditional path fitting algorithms. Vehicle path fitting is an essential preprocessing step for many applications such as traffic flow analysis, driving route planning, etc. At present, most path fitting algorithms use local or incremental algorithms, which completely ignore the correlation between adjacent points, and are only suitable for GPS data with a high sampling rate. For signaling data with a low sampling rate, the processing results are poor . To this end, we propose a motor vehicle path fitting algorithm based on low...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01C21/28G01C21/34G06Q10/04
CPCG01C21/28G01C21/3446G06Q10/047
Inventor 李永军赵子睿孙恩泽王亦凡
Owner 江苏欣网视讯软件技术有限公司
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