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Automation of aggregate characterization using laser profiling and digital image analysis.

机译:使用激光轮廓分析和数字图像分析实现骨料表征的自动化。

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摘要

Particle morphological properties such as size, shape, angularity, and texture are key properties that are frequently used to characterize aggregates. The characteristics of aggregates are crucial to the strength, durability, and serviceability of the structure in which they are used. Thus, it is important to select aggregates that have proper characteristics for each specific application. Use of improper aggregate can cause rapid deterioration or even failure of the structure.; The current standard aggregate test methods are generally labor-intensive, time-consuming, and subject to human errors. Moreover, important properties of aggregates may not be captured by the standard methods due to a lack of an objective way of quantifying critical aggregate properties. Increased quality expectations of products along with recent technological advances in information technology are motivating new developments to provide fast and accurate aggregate characterization. The resulting information can enable a real time quality control of aggregate production as well as lead to better design and construction methods of portland cement concrete and hot mix asphalt.; This dissertation presents a system to measure various morphological characteristics of construction aggregates effectively. Automatic measurement of various particle properties is of great interest because it has the potential to solve such problems in manual measurements as subjectivity, labor intensity, and slow speed. The main efforts of this research are placed on three-dimensional (3D) laser profiling, particle segmentation algorithms, particle measurement algorithms, and generalized particle descriptors. First, true 3D data of aggregate particles obtained by laser profiling are transformed into digital images. Second, a segmentation algorithm and a particle measurement algorithm are developed to separate particles and process each particle data individually with the aid of various kinds of digital image technologies. Finally, in order to provide a generalized, quantitative, and representative way to characterize aggregate particles, 3D particle descriptors are developed using the multi-resolution analysis feature of wavelet transforms. Verification tests show that this approach could characterize various aggregate properties in a fast, accurate, and reliable way. When implemented, this ability to automatically analyze multiple characteristics of an aggregate sample is expected to provide not only economic but also intangible strategic gains.
机译:粒子的形态特性(例如大小,形状,角度和纹理)是关键特性,经常用于表征聚集体。骨料的特性对于使用它们的结构的强度,耐久性和可使用性至关重要。因此,选择具有适合每个特定应用程序特性的聚集体很重要。使用不合适的骨料会导致结构快速退化甚至失效。当前的标准集合测试方法通常是劳动密集型的,费时的并且容易受到人为错误的影响。此外,由于缺乏量化关键骨料性质的客观方法,标准方法可能无法捕获骨料的重要性质。随着人们对产品质量期望的提高以及信息技术的最新技术发展,正在推动新的发展,以提供快速,准确的骨料表征。得到的信息可以实现骨料生产的实时质量控制,并导致更好的波特兰水泥混凝土和热拌沥青的设计和施工方法。本文提出了一种有效测量建筑骨料各种形态特征的系统。各种颗粒性质的自动测量非常令人感兴趣,因为它有可能解决手动测量中的一些问题,如主观性,劳动强度和速度慢。这项研究的主要工作放在三维(3D)激光轮廓分析,粒子分割算法,粒子测量算法和广义粒子描述符上。首先,将通过激光轮廓分析获得的聚集体颗粒的真实3D数据转换为数字图像。其次,开发了分割算法和粒子测量算法,以借助各种数字图像技术分离粒子并分别处理每个粒子数据。最后,为了提供一种表征聚集粒子的通用,定量和代表性方法,使用小波变换的多分辨率分析功能开发了3D粒子描述符。验证测试表明,这种方法可以快速,准确和可靠地表征各种骨料的特性。实施后,这种自动分析集合样本的多个特征的功能不仅可以带来经济收益,而且可以带来无形的战略收益。

著录项

  • 作者

    Kim, Hyoungkwan.;

  • 作者单位

    The University of Texas at Austin.;

  • 授予单位 The University of Texas at Austin.;
  • 学科 Engineering Civil.; Engineering Materials Science.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 183 p.
  • 总页数 183
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;工程材料学;
  • 关键词

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