Abstract

This paper presents a novel method for tomographic measurement and data analysis based on crowdsourcing. X-ray radiography imaging was initially applied to determine silo flow parameters. We used traced particles immersed in the bulk to investigate gravitational silo flow. The reconstructed images were not perfect, due to inhomogeneous silo filling and nonlinear attenuation of the X-rays on the way to the detector. Automatic processing of such data is not feasible. Therefore, we used crowdsourcing for human-driven annotation of the trace particles. As we aimed to extract meaningful flow parameters, we developed a modified crowdsourcing annotation method, focusing on selected important areas of the silo pictures only. We call this method “targeted crowdsourcing”, and it enables more efficient crowd work, as it is focused on the most important areas of the image that allow determination of the flow parameters. The results show that it is possible to analyze volumetric material structure movement based on 2D radiography data showing the location and movement of tiny metal trace particles. A quantitative description of the flow obtained from the horizontal and vertical velocity components was derived for different parts of the model silo volume. Targeting the attention of crowd workers towards either a specific zone or a particular particle speeds up the pre-processing stage while preserving the same quality of the output, quantified by important flow parameters.

Highlights

  • Crowdsourcing is an emerging method for processing large amounts of data using geographically-distributed heterogeneous workers

  • As we investigated two types of silo flow, the silo was filled on two separate occasions, which resulted in different measurement records and significantly different reconstructed pictures of the flat panel detector output

  • We presented a method for extracting process parameters using crowdsourcing

Read more

Summary

Introduction

Crowdsourcing is an emerging method for processing large amounts of data using geographically-distributed heterogeneous workers This method has proven suitable for resolving computational problems that are difficult to solve automatically, as it is capable of coupling the data processing capabilities of automated systems with human intelligence. Another advantage of crowdsourcing is the reduced cost (in terms of money, resources, or time). Most of the tasks submitted to widely-available crowdsourcing servers (www.mturk.com, www.crowdflower.com, www.crowdmed.com) could conceivably be processed by computer systems Due to their complexity or uniqueness, the difficulty of achieving sufficiently high accuracy, or economic factors, different methods of processing such datasets are preferred, based on human orientation.

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call