Abstract

The objective of this study is to evaluate the feasibility of deep-learning-based segmentation of the area covered by fresh and young concrete in the images of construction sites. The RGB images of construction sites under various actual situations were used as an input into several types of convolutional neural network (CNN)–based segmentation models, which were trained using training image sets. Various ranges of threshold values were applied for the classification, and their accuracy and recall capacity were quantified. The trained models could segment the concrete area overall although they were not able to judge the difference between concrete of different ages as professionals can. By increasing the threshold values for the softmax classifier, the cases of incorrect prediction as concrete became almost zero, while some areas of concrete became segmented as not concrete.

Highlights

  • It can be seen that the model with ResNet convolutional neural network (CNN) architecture as a backbone have a higher score of accuracy, recall, and

  • Deep-learning-based image segmentation is highly applicable in the construction industry especially for monitoring and inspection purposes

  • The main target of this investigation was to identify the area covered by fresh and young concrete from images of construction sites so that it can be used for various applications

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Summary

Introduction

Experts visit the construction sites or existing structures to observe the condition of the concrete and take pictures or videos, i.e., a manual inspection

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