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Detecting semantic regions of construction site images by transfer learning and saliency computation

机译:通过转移学习和显着性计算检测施工现场图像的语义区域

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摘要

Effective use of massive construction site images and videos requires an efficient storage and retrieval method. However, significant portions of the image regions contain little useful information to project engineers and managers. To reduce resource waste in data storage and retrieval, we developed a new semantic region detection approach using transfer learning and modified saliency computation method without the need to specify targeted objects. In the new approach, the saliency matrix is generated using labelled bounding boxes, and the semantic regions are selected using a developed algorithm. The proposed method was applied to case studies based on two image datasets. The case studies suggest that the proposed method can efficiently detect semantic regions in site images and detect construction events from other image datasets without a modifying or retraining process. The research contributes to construction image analytics academically by advancing the context-based semantic region detection method and practically by facilitating the effective storage and processing of the massive site images and videos.
机译:有效使用大量建筑工地图像和视频需要有效的存储和检索方法。但是,图像区域的很大一部分几乎不包含对项目工程师和经理有用的信息。为了减少数据存储和检索中的资源浪费,我们开发了一种新的语义区域检测方法,该方法使用转移学习和改进的显着性计算方法,而无需指定目标对象。在新方法中,显着性矩阵是使用标记的边界框生成的,而语义区域是使用改进的算法选择的。将该方法应用于基于两个图像数据集的案例研究。案例研究表明,所提出的方法可以有效地检测站点图像中的语义区域并从其他图像数据集中检测构造事件,而无需进行修改或重新训练过程。该研究通过推进基于上下文的语义区域检测方法,并在实践中通过促进对大量站点图像和视频的有效存储和处理,在学术上为建筑图像分析做出了贡献。

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