Published January 23, 2016 | Version v1
Dataset Open

3D Matching of resource vision tracking trajectories

  • 1. PhD Candidate, Construction Information Technology Group, Laing O’Rourke Centre for Construction Engineering and Technology, Department of Engineering, University of Cambridge, UK
  • 2. Laing O’Rourke Lecturer of Construction Engineering, Department of Engineering, University of Cambridge, UK

Description

Three dimensional (3D) paths of resources, have been proposed in construction management, as an efficient way for measuring labor productivity. These paths, are extracted either by using sensors such as Global Positioning System (GPS), Radio Frequency Identification (RFID), and Ultra-wideband (UWB), or based on cameras placed at jobsites for surveillance purposes. However, the tag based methods are seriously limited by privacy conflicts since they are not welcome from the personnel. On the other hand, the computer vision based methods have not achieved full automation in measuring labour productivity because they require prior knowledge of the type of tasks performed in specific working zones. This is associated with the lack of depth information. For this purpose, this paper proposes a computationally efficient computer vision method for matching construction workers across different frames. Entity matching, is a process that corresponds to a compulsory step prior to the calculation of the 3D position. The proposed matching method, is based on epipolar geometry, template and motion similarity features. The main result of this process, is to provide a method for the acquisition of the 3D paths that compose the detailed profile of a construction activity in terms of both time and space.

Files

Files (210.3 MB)

Name Size Download all
md5:e78bd1ef21f17be5d08acc2aa81a5eb8
100.4 MB Download
md5:34b7a5a42e5848ae159e7676bd0df34a
109.9 MB Download
md5:48afb6f4aa1c9f700aeffa8cec1fcc51
35.8 kB Download