Correlation-Aware Attention Branch Network Using Multi-Modal Data For Deterioration Level Estimation Of Infrastructures
Naoki Ogawa, Keisuke Maeda, Takahiro Ogawa, Miki Haseyama
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This paper presents a correlation-aware attention branch network (CorABN) using multi-modal data for deterioration level estimation of infrastructures. CorABN can collaboratively use visual features from distress images and text features from text data recorded at the inspection to improve the estimation performance of deterioration levels. Specifically, by maximizing correlation between the visual and text features that provide useful information for the deterioration level estimation, a correlation-aware attention map can be generated. Besides, the text features are also utilized in the final estimation along with visual features improved by the attention mechanism to achieve higher estimation performance. With the losses based on both the estimation performance and the correlation, CorABN can train the entire model in an end-to-end manner. Experiments using distress images and their corresponding text data show the effectiveness of the proposed method.