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CrackFormer: Transformer Network for Fine-Grained Crack Detection

Huajun Liu, Xiangyu Miao, Christoph Mertz, Chengzhong Xu, Hui Kong

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)207 citationsDOI

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.

Topics & Concepts

Computer scienceEncoderTransformerEmbeddingFeature extractionScalingConvolutional neural networkArtificial intelligencePattern recognition (psychology)VoltageMathematicsQuantum mechanicsOperating systemPhysicsGeometryInfrastructure Maintenance and MonitoringAsphalt Pavement Performance EvaluationConcrete Corrosion and Durability