基于语义分割算法的新拌混凝土图像质量控制

Tobias Schack, Max Coenen, Michael Haist
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摘要

在实践中,全世界都在使用各种经验方法,如流动台试验或坍落度试验,来评估施工现场新拌混凝土的工作性。大多数这些试验的共同点是,新拌混凝土在一个标准化的台状平台上经历某种确定的流动过程,并通过测量流饼直径或其下垂度等简单方法确定材料停止流动后的几何特性。本文提出了一种基于图像的新方法,用于自动推导混凝土特性,作为流动台试验的一部分。这种基于图像的方法可以对混凝土性能进行数字化评估。通过结合数字图像分析和深度学习方法,不仅可以从图像数据中推导出混凝土的一致性,还可以推导出大量额外的混凝土特性。这样,新拌混凝土的质量控制就可以扩展到包括大量附加参数,而这些参数目前既不能提供给生产商,也不能提供给施工现场。这些数据可以集成到一个数字控制回路中,从而利用高精度的实时数据自动实现混凝土生产商和施工现场之间的通信。
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Image-based quality control of fresh concrete based on semantic segmentation algorithms

In practice, various empirical methods such as the flow table test or the slump test are in use worldwide for assessing the workability of fresh concrete on the construction site. The majority of these tests has in common, that fresh concrete is subjected to some kind of defined flow process on a standardized table-like platform and that the geometrical properties of the material after the flow has ceased is determined by simple means such as measuring the flow cake diameter or its sag. The paper at hand proposes a novel image-based approach for an automatic derivation of concrete properties as part of the flow table test. The image-based method enables a digital evaluation of concrete properties. By combining digital image analysis and deep learning methods, not only the consistency but also an abundance of additional concrete properties can be derived from image data. In this way, the quality control of the fresh concrete can be expanded to include a large number of additional parameters, currently not available to the producer nor to the construction site. This data can be integrated into a digital control loop, with which communication between the concrete producer and the construction site can be automated using highly precise real-time data.

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