利用摄影测量和人工智能处理历史照片和电影片段,用于文化遗产文献和虚拟重建

Q4 Computer Science
F. Condorelli
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引用次数: 0

摘要

本文的具体目标是通过考虑摄影测量的重要作用,通过历史档案中可用的不同数据的度量潜力提供短途旅行。目的是探索如何从不同质量的旧照片和视频中提取不再存在或随时间变化的建筑物的度量信息,进行3D虚拟重建,分析历史档案中存储的材料,以支持文化遗产历史研究的研究人员和专家。为了处理这些数据并获得计量认证的结果,需要对标准摄影测量管道的算法进行修改。这个目的是通过使用开源的Structure-from-Motion算法和创建一个特定的基准来比较结果来实现的。除了对历史照片进行处理外,摄影测量学与人工智能相结合,改进了在视频资料中搜索建筑遗产的方式,从效率和时间上减少了档案馆操作员手工检查的工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Processing historical photographs and film footage with Photogrammetry and Artificial Intelligence for Cultural Heritage documentation and virtual reconstruction
The specific objective of this thesis is to offer an excursion through the metric potentialities of different data  available in historical archives, by considering the essential role of photogrammetry. The aim is to explore how metric information about buildings which no longer exist or transformed over time could be extracted from old photographs and videos of different quality, for their 3D virtual reconstruction analysing the material stored in historical archives to support researchers and experts in historical research of Cultural Heritage.In order to process these data and to obtain metrically certified results, a modification of the algorithms of the standard photogrammetric pipeline was necessary. This purpose was achieved with the use of open-source Structure-from-Motion algorithms and the creation of a specific benchmark to compare the results.Besides the processing of historical photograph, photogrammetry is combined with Artificial Intelligence to improve ways to search for architectural heritage in video material and to reduce the effort of manually examining them by the operator in the archive in terms of efficiency and time.
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来源期刊
Electronic Letters on Computer Vision and Image Analysis
Electronic Letters on Computer Vision and Image Analysis Computer Science-Computer Vision and Pattern Recognition
CiteScore
2.50
自引率
0.00%
发文量
19
审稿时长
12 weeks
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