Generation of Synthetic Digital Image Correlation Images Using the Open-Source Blender Software

被引:0
|
作者
D. P. Rohe
E. M. C. Jones
机构
[1] Sandia National Laboratories,
来源
Experimental Techniques | 2022年 / 46卷
关键词
Blender; Digital image correlation; Finite element; Synthetic image deformation;
D O I
暂无
中图分类号
学科分类号
摘要
With camera equipment becoming cheaper and computer processing power increasing exponentially, optical test methods are becoming ubiquitous in the mechanics and dynamics communities. However, unlike more traditional methods where the measurement response of interest is obtained directly from the sensor (e.g. an accelerometer directly provides an acceleration), image-based measurement techniques often require a non-trivial amount of post-processing to extract displacements and strains from a series of images. Using experimental images to develop and validate these post-processing algorithms can be a challenge; real images have a finite depth of field, they can have poor contrast, they can be noisy, there can be calibration errors, etc. It is advantageous to create synthetic images with which image processing algorithms can be investigated without the need to deal with all the complexity and cost involved in a real experiment. Synthetic images also provide access to a “true” analytical solution, which is typically not available in an experiment. However, many synthetic image generation tools are either bespoke research codes or built into commercial software, which can limit accessibility. Blender is a free and open-source 3D software package that supports scene modeling and rendering, among other features. It runs an underlying Python scripting engine, so activities such as building and deforming a mesh or rendering a series of images can be automated. For these reasons, Blender has the potential to be used more widely than current synthetic image tools, as well as perform more sophisticated analyses. While Blender was not designed for engineering purposes, this work will demonstrate Blender’s suitability for generating synthetic test images for digital image correlation, and show its accuracy is comparable to commercial synthetic image generation software packages.
引用
收藏
页码:615 / 631
页数:16
相关论文
共 50 条
  • [31] ICY: A new open-source community image processing software
    De Chaumont, Fabrice
    Dallongeville, Stephane
    Olivo-Marin, Jean-Christophe
    [J]. Proceedings - International Symposium on Biomedical Imaging, 2011, : 234 - 237
  • [32] Free and Open Source Software for the Manipulation of Digital Images
    Solomon, Robert W.
    [J]. AMERICAN JOURNAL OF ROENTGENOLOGY, 2009, 192 (06) : W330 - W334
  • [33] Web Generator: An open-source software for synthetic web-based user interface dataset generation
    Soto, Andres
    Mora, Hector
    Riascos, Jaime A.
    [J]. SOFTWAREX, 2022, 17
  • [34] Open-source software - Introduction
    Sabbah, D
    Frye, D
    [J]. IBM SYSTEMS JOURNAL, 2005, 44 (02)
  • [35] Open-source bioinformatics software
    Vlagioiu, Constantin
    Vuta, Vlad
    Barbuceanu, Florica
    Predoi, Gabriel
    Tudor, Nicolae
    [J]. JOURNAL OF BIOTECHNOLOGY, 2017, 256 : S53 - S53
  • [36] OPEN-SOURCE SOFTWARE IN ROBOTICS
    Timoftei, Sanda
    Brad, Emilia
    Sarb, Anca
    Stan, Ovidiu
    [J]. ACTA TECHNICA NAPOCENSIS SERIES-APPLIED MATHEMATICS MECHANICS AND ENGINEERING, 2018, 61 (03): : 519 - 526
  • [37] Robust open-source software
    Neumann, PG
    [J]. COMMUNICATIONS OF THE ACM, 1999, 42 (02) : 128 - 128
  • [38] Open-source software for repositories
    Vasilyeva, Natalya V.
    [J]. NAUCHNYE I TEKHNICHESKIE BIBLIOTEKI-SCIENTIFIC AND TECHNICAL LIBRARIES, 2023, (03): : 102 - 119
  • [39] An Overview of Open-Source Software Licenses and the Value of Open-Source Software to Public Health Initiatives
    Hahn, Erin N.
    [J]. JOHNS HOPKINS APL TECHNICAL DIGEST, 2014, 32 (04): : 690 - 698
  • [40] Methodology for Bathymetric Mapping Using Open-Source Software
    Dumpis, Janis
    Lagzdins, Ainis
    [J]. ENVIRONMENTAL AND CLIMATE TECHNOLOGIES, 2020, 24 (03) : 239 - 248