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

November 04, 2020 ยท Entered Twilight ยท ๐Ÿ› International Conference on Pattern Recognition

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Authors Yuki Inoue, Hiroto Nagayoshi arXiv ID 2011.02208 Category cs.CV: Computer Vision Citations 17 Venue International Conference on Pattern Recognition Repository https://github.com/hitachi-rd-cv/weakly-sup-crackdet โญ 17 Last Checked 2 months ago
Abstract
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. Implementation of the proposed framework is publicly available at https://github.com/hitachi-rd-cv/weakly-sup-crackdet.
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