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Crack Detection as a Weakly-Supervised Problem: Towards Achieving Less Annotation-Intensive Crack Detectors

机译:裂缝检测作为弱监督的问题:朝向实现更少的注释密集型裂纹探测器

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Automatic crack detection is a critical task that has the potential to drastically reduce labor-intensive building and road inspections currently being done manually. Recent studies in this field have significantly improved the detection accuracy. However, the methods often heavily rely on costly annotation processes. In addition, to handle a wide variety of target domains, new batches of annotations are usually required for each new environment. This makes the data annotation cost a significant bottleneck when deploying crack detection systems in real life. To resolve this issue, we formulate the crack detection problem as a weakly-supervised problem and propose a two-branched framework. By combining predictions of a supervised model trained on low quality annotations with predictions based on pixel brightness, our framework is less affected by the annotation quality. Experimental results show that the proposed framework retains high detection accuracy even when provided with low quality annotations.
机译:自动裂纹检测是一项关键任务,有可能大大减少目前手动完成的劳动密集型建筑和道路检查。该领域最近的研究显着提高了检测准确性。但是,这些方法通常严重依赖昂贵的注释过程。此外,为了处理各种目标域,每个新环境通常需要新的批次注释。这使得数据注释在现实生活中部署裂缝检测系统时成本显着的瓶颈。为了解决这个问题,我们将裂缝检测问题作为一个弱监督问题,提出了一个双分支的框架。通过基于像素亮度的预测,通过基于像素亮度的预测,将监督模型的预测相结合,我们的框架受到注释质量的影响。实验结果表明,即使在提供低质量注释时,所提出的框架也能保持高检测精度。

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