The acquisition and evaluation of pavement surface data play an essential role in pavement condition evaluation. In this paper, an efficient and effective end-to-end network for automatic pavement crack segmentation, called RHA-Net, is proposed to improve the pavement crack segmentation accuracy. The RHA-Net is built by integrating residual blocks (ResBlocks) and hybrid attention blocks into the encoder-decoder architecture. The ResBlocks are used to improve the ability of RHA-Net to extract high-level abstract features. The hybrid attention blocks are designed to fuse both low-level features and high-level features to help the model focus on correct channels and areas of cracks, thereby improving the feature presentation ability of RHA-Net. An image data set containing 789 pavement crack images collected by a self-designed mobile robot is constructed and used for training and evaluating the proposed model. Compared with other state-of-the-art networks, the proposed model achieves better performance and the functionalities of adding residual blocks and hybrid attention mechanisms are validated in a comprehensive ablation study. Additionally, a light-weighted version of the model generated by introducing depthwise separable convolution achieves better a performance and a much faster processing speed with 1/30 of the number of U-Net parameters. The developed system can segment pavement crack in real-time on an embedded device Jetson TX2 (25 FPS). The video taken in real-time experiments is released at https://youtu.be/3XIogk0fiG4.
翻译:获取和评价人行道表面数据在人行道状况评估中发挥着必不可少的作用。在本文件中,为了提高人行道裂缝的准确性,建议建立一个名为RAHA-Net的高效、高效端到端的自动人行道裂缝分割网,以提高人行道裂缝的准确性。RHA-Net是通过将残余区块(ResBlocks)和混合关注区块纳入编码器脱coder-decoder结构来建造的。ResBlocks用于提高RHA-Net提取高层次抽象特征的能力。混合关注区块的设计旨在结合低层次特征和高层次特征,以帮助将模型重点放在正确的通道和裂缝区域,从而提高RAHA-Net的特征展示能力。一个图像数据集,包含由自行设计的移动机器人收集的789个人行道裂缝片(ResBlocks)和混合关注区块,用于培训和评价拟议模型。与其他州-艺术网络的比较,拟议模型取得更好的性能,以及添加残余区块和混合关注机制的功能,在全面通货膨胀研究中加以验证。另外,一个较轻量重的版版版版版版版版版版版版版的F-ROD-reval-reval-reval-leval-l-lal-leval-de-l-l-leval-de-de-leval-de-de-leval-lent-lvial-de-de-lational-de-de-de-de-l-lent-lation-lation-lation-lation-lation-lent-de-de-demental-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-l-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-de-lent-de-de-de-l-l-l-l-l-l-l-l-