The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
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Citation
Articles | Volume XL-1/W5
https://doi.org/10.5194/isprsarchives-XL-1-W5-425-2015
https://doi.org/10.5194/isprsarchives-XL-1-W5-425-2015
11 Dec 2015
 | 11 Dec 2015

KINECT, A NOVEL CUTTING EDGE TOOL IN PAVEMENT DATA COLLECTION

A. Mahmoudzadeh, S. Firoozi Yeganeh, and A. Golroo

Keywords: Kinect sensor, Pavement Management, Crack, Pothole, Defect Detection, Data Collection

Abstract. Pavement roughness and surface distress detection is of interest of decision makers due to vehicle safety, user satisfaction, and cost saving. Data collection, as a core of pavement management systems, is required for these detections. There are two major types of data collection: traditional/manual data collection and automated/semi-automated data collection.

This paper study different non-destructive tools in detecting cracks and potholes. For this purpose, automated data collection tools, which have been utilized recently are discussed and their applications are criticized. The main issue is the significant amount of money as a capital investment needed to buy the vehicle.

The main scope of this paper is to study the approach and related tools that not only are cost-effective but also precise and accurate. The new sensor called Kinect has all of these specifications. It can capture both RGB images and depth which are of significant use in measuring cracks and potholes. This sensor is able to take image of surfaces with adequate resolution to detect cracks along with measurement of distance between sensor and obstacles in front of it which results in depth of defects.

This technology has been very recently studied by few researchers in different fields of studies such as project management, biomedical engineering, etc. Pavement management has not paid enough attention to use of Kinect in monitoring and detecting distresses. This paper is aimed at providing a thorough literature review on usage of Kinect in pavement management and finally proposing the best approach which is cost-effective and precise.