学习室内空间感知

IF 1.2 Q4 TELECOMMUNICATIONS
Andreas Sedlmeier, Sebastian Feld
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引用次数: 7

摘要

人类对位置和空间的感知构成了与基于位置的服务(LBS)进行交互的基础。我们的工作旨在通过对空间视觉感知的数字表示的研究,在机器及其用户之间发展对位置和空间的共同认识和理解。建筑中的不同结构,如房间、走廊和门口,在这些表现中形成了不同的、对应的模式。由于神经网络深度学习领域的最新进展,现在似乎有可能探索自动学习这些重复结构的想法。本文提供了一个完整的框架:从收集室内平面图上沿地理空间轨迹的isovist测量开始,通过统计数据分析,无监督地提取有意义的结构,直到训练适用于不同环境的模型。我们表明,isovist测量确实反映了在不同建筑中发现的重复结构,这些重复模式以无监督机器学习可以识别它们的方式编码在数据中,并且所识别的结构是有意义的,因为它们代表了与人类相关的概念。此外,我们提出使用聚类相似性分析作为量化视觉感知相似性的一个有前途的概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning indoor space perception
ABSTRACT Human perception of location and space forms the basis upon which the interaction with location-based services (LBS) takes place. Our work aims to develop a shared awareness and common understanding of location and space,between machines and their users by building upon research into the numerical representation of the visual perception of space. Different structures in buildings like rooms, hallways and doorways form different, corresponding patterns in these representations. Thanks to recent advances in the field of deep learning with neural networks, it now seems possible to explore the idea of automatically learning these recurring structures. This article presents a complete framework: starting from the collection of isovist measures along geospatial trajectories on indoor floor plans,over statistical data analysis, the unsupervised extraction of meaningful structure, up to the training of models that generalize to different environments. We show that isovist measures do reflect the recurring structures found in different buildings, that these recurring patterns are encoded in the data in a way that unsupervised machine learning can identify them andthat the identified structures are meaningful as they represent human relatable concepts.Furthermore, we propose to use cluster similarity analysis as a promising concept for quantifying visual perception similarity.
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来源期刊
CiteScore
3.70
自引率
8.70%
发文量
12
期刊介绍: The aim of this interdisciplinary and international journal is to provide a forum for the exchange of original ideas, techniques, designs and experiences in the rapidly growing field of location based services on networked mobile devices. It is intended to interest those who design, implement and deliver location based services in a wide range of contexts. Published research will span the field from location based computing and next-generation interfaces through telecom location architectures to business models and the social implications of this technology. The diversity of content echoes the extended nature of the chain of players required to make location based services a reality.
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