探索机器学习在博物馆陈列布置中的应用

L. Fan
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引用次数: 0

摘要

。对博物馆展示的不断修改和改进将使参观者保持高度兴趣,并在与展示对象的互动中获得参观利益。博物馆展厅内物品布置是一个复杂、成本高、耗时长、人工费力的过程。建立定制化的展览空间布局推荐方案,为博物馆工作人员提供画廊的配置框架,提高展览布局效率,是必要的。根据博物馆的互动体验模式,我们提出参观者的行为、物品的作用和空间布局三个维度,将有利于寻找展览布局的情感和体现程序和物理原则。另一方面,人工智能最先进的机器学习技术已经广泛应用于许多专业领域(如诊断、监测、预测、分类、解释、调度)。根据展览布局的属性和机器学习方法的特点,我们认为机器学习是一种非常有潜力和强大的方法,可以基于之前的布局知识来构建定制的展览布局推荐方案,值得在未来的研究中开发和实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Machine learning application in exhibition layout of museum
. Continual revisions and enhancements to the presentation in museum will allow visitors engagement to remain high interest and acquire visiting benefits when interaction within the display objects. The layout task of objects in exhibition gallery of museum is quite complex, high-cost, time-consuming, and laborious manual process. It is essential and necessary to establish a customized recommendation scheme of exhibition spatial layouts to provide museum crews the configuration frameworks of gallery to improve the efficient of exhibition layout. According to the interactive experience model in museums, we suggest three dimensions: the visitors’ behavior, the role of objects, and the layout of space, will benefit to looking for affective and embodied procedures and physical principles of exhibition layout. On the other hand, the state-of-the-art machine learning of artificial intelligence has been widely applied in lots of professional fields (e.g. diagnosis, monitory, prediction, classification, interpretation, scheduling). According to the attributions of exhibition layout and the characteristic of machine learning methods, we suggest that machine learning is a great potential and powerful approach to build up a customized recommendation scheme of exhibition layouts based on the previous knowledge of layout, and it is worth to develop and implement in future research.
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