Automatic pixel-level bridge crack detection using learning context flux field with convolutional feature fusion

IF 3.6 2区 工程技术 Q1 ENGINEERING, CIVIL
Gang Li, Yiyang Liu, Dan Shen, Biao Wang
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Abstract

Surface crack detection for concrete bridge is a practical but challenging task, owing to the inherent large variety of crack images and the complexity of the background. Many recent approaches formulate crack detection as a pixel-level binary classification problem. However, tiny cracks present a low contrast with the surrounding background, which is hard to be found by current methods. In this paper, the CrackFlux is proposed with a learning-based data-driven methods, which detects cracks via the learning context flux field. In precise, a ConvNets is trained to predict the two-dimensional vector field and each pixel is projected onto candidate crack points. The proposed “context flux field” representation has two major superiorities. First of all, it uses the spatial context of the image points to encode the relative position of the crack pixels. Besides, because the context flux is a region-based vector field, it performs better to tackle cracks with extreme widths. To demonstrate the effectiveness of the proposed method, it is compared with recent state-of-the-art crack detection methods on four datasets under the standard evaluation metric. These experiments demonstrate that the proposed method of “the crack detection via context flux field” exceeds the existing methods and build the new baseline for crack detection.

Abstract Image

利用卷积特征融合学习上下文通量场自动检测像素级桥梁裂缝
混凝土桥梁的表面裂缝检测是一项实用但极具挑战性的任务,因为裂缝图像种类繁多,背景复杂。最近的许多方法都将裂缝检测表述为像素级二元分类问题。然而,微小裂缝与周围背景的对比度很低,目前的方法很难发现。本文提出的 CrackFlux 是一种基于学习的数据驱动方法,它通过学习上下文通量场来检测裂缝。准确地说,是通过训练 ConvNets 来预测二维向量场,并将每个像素投射到候选裂缝点上。所提出的 "上下文通量场 "表示法有两大优势。首先,它利用图像点的空间上下文来编码裂缝像素的相对位置。此外,由于 "上下文通量 "是一个基于区域的矢量场,因此在处理极宽的裂缝时效果更好。为了证明所提方法的有效性,我们在四个数据集上根据标准评估指标将其与近期最先进的裂缝检测方法进行了比较。这些实验证明,所提出的 "通过上下文通量场检测裂缝 "方法超越了现有方法,为裂缝检测建立了新的基准。
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来源期刊
Journal of Civil Structural Health Monitoring
Journal of Civil Structural Health Monitoring Engineering-Safety, Risk, Reliability and Quality
CiteScore
8.10
自引率
11.40%
发文量
105
期刊介绍: The Journal of Civil Structural Health Monitoring (JCSHM) publishes articles to advance the understanding and the application of health monitoring methods for the condition assessment and management of civil infrastructure systems. JCSHM serves as a focal point for sharing knowledge and experience in technologies impacting the discipline of Civionics and Civil Structural Health Monitoring, especially in terms of load capacity ratings and service life estimation.
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