人工知能学会全国大会論文集
Online ISSN : 2758-7347
37th (2023)
セッションID: 1U3-IS-2a-03
会議情報

One-class Damage Detector Using Fully-Convolutional Data Description for Prognostics
*Takato YASUNOMasahiro OKANORiku OGATAJunichiro FUJII
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会議録・要旨集 フリー

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It is important for infrastructure managers to maintain a high standard to ensure user satisfaction during a lifecycle of infrastructures. Surveillance cameras and visual inspections have enabled progress toward automating the detection of anomalous features and assessing the occurrence of the deterioration. Frequently, collecting damage data constraints time consuming and repeated inspections. One-class damage detection approach has a merit that only the normal images enables us to optimize the parameters. Simultaneously, the visual explanation using the heat map enable us to understand the localized anomalous feature. We propose a civil-purpose application to automate one-class damage detection using the fully-convolutional data description (FCDD). We also visualize the explanation of the damage feature using the up-sampling-based activation map with the Gaussian up-sampling from the receptive field of the fully convolutional network (FCN). We demonstrate it in experimental studies: concrete damage and steel corrosion and mention its usefulness and future works.

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© 2023 The Japanese Society for Artificial Intelligence
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