CrackFormer: Transformer Network for Fine-Grained Crack Detection

Huajun Liu, Xiangyu Miao, C. Mertz, Chengzhong Xu, Hui Kong
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引用次数: 35

Abstract

Cracks are irregular line structures that are of interest in many computer vision applications. Crack detection (e.g., from pavement images) is a challenging task due to intensity in-homogeneity, topology complexity, low contrast and noisy background. The overall crack detection accuracy can be significantly affected by the detection performance on fine-grained cracks. In this work, we propose a Crack Transformer network (CrackFormer) for fine-grained crack detection. The CrackFormer is composed of novel attention modules in a SegNet-like encoder-decoder architecture. Specifically, it consists of novel self-attention modules with 1x1 convolutional kernels for efficient contextual information extraction across feature-channels, and efficient positional embedding to capture large receptive field contextual information for long range interactions. It also introduces new scaling-attention modules to combine outputs from the corresponding encoder and decoder blocks to suppress non-semantic features and sharpen semantic ones. The CrackFormer is trained and evaluated on three classical crack datasets. The experimental results show that the CrackFormer achieves the Optimal Dataset Scale (ODS) values of 0.871, 0.877 and 0.881, respectively, on the three datasets and outperforms the state-of-the-art methods.
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用于细粒度裂纹检测的变压器网络
裂缝是许多计算机视觉应用中感兴趣的不规则线结构。由于强度不均匀性、拓扑复杂性、低对比度和噪声背景,裂缝检测(例如路面图像)是一项具有挑战性的任务。细粒裂纹的检测性能对整体裂纹检测精度有显著影响。在这项工作中,我们提出了一个用于细粒度裂纹检测的裂纹变压器网络(CrackFormer)。CrackFormer由新颖的注意力模块组成,采用类似segnet的编码器-解码器架构。具体来说,它包括具有1x1卷积核的新颖自注意模块,用于跨特征通道的高效上下文信息提取,以及有效的位置嵌入,用于捕获远距离交互的大接受场上下文信息。它还引入了新的缩放注意模块,将相应编码器和解码器块的输出组合在一起,以抑制非语义特征并增强语义特征。CrackFormer在三个经典裂纹数据集上进行训练和评估。实验结果表明,该方法在3个数据集上的最优数据集尺度(ODS)值分别为0.871、0.877和0.881,优于现有方法。
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