CumInCAD is a Cumulative Index about publications in Computer Aided Architectural Design
supported by the sibling associations ACADIA, CAADRIA, eCAADe, SIGraDi, ASCAAD and CAAD futures

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_id caadria2016_549
id caadria2016_549
authors Fischer, Thomas and Christiane M. Herr
year 2016
title Parametric Customisation of A 3D Concrete Printed Pavilion
doi https://doi.org/10.52842/conf.caadria.2016.549
source Living Systems and Micro-Utopias: Towards Continuous Designing, Proceedings of the 21st International Conference on Computer-Aided Architectural Design Research in Asia (CAADRIA 2016) / Melbourne 30 March–2 April 2016, pp. 549-558
summary Advances in 3D printing technology have reached architectural scales with 3D concrete printing, a digitally controlled fabrication process in which fibre-reinforced concrete is deposited layer-by-layer to fabricate building elements. In this paper we present a brief overview of key concrete 3D printing related research development efforts, followed by a report on a research project into the parametric online customisation and fabrication of small 3D concrete printed pavilions. The research project is set in, and addresses possibilities and constraints of, the developing local Chinese construction context.
keywords 3D concrete printing; parametric design; digital fabrication; online customisation; China
series CAADRIA
email
last changed 2022/06/07 07:51

_id caadria2024_186
id caadria2024_186
authors Huang, Jingfei and Tu, Han
year 2024
title Inconsistent Affective Reaction: Sentiment of Perception and Opinion in Urban Environments
doi https://doi.org/10.52842/conf.caadria.2024.2.395
source Nicole Gardner, Christiane M. Herr, Likai Wang, Hirano Toshiki, Sumbul Ahmad Khan (eds.), ACCELERATED DESIGN - Proceedings of the 29th CAADRIA Conference, Singapore, 20-26 April 2024, Volume 2, pp. 395–404
summary The ascension of social media platforms has transformed our understanding of urban environments, giving rise to nuanced variations in sentiment reaction embedded within human perception and opinion, and challenging existing multidimensional sentiment analysis approaches in urban studies. This study presents novel methodologies for identifying and elucidating sentiment inconsistency, constructing a dataset encompassing 140,750 Baidu and Tencent Street view images to measure perceptions, and 984,024 Weibo social media text posts to measure opinions. A reaction index is developed, integrating object detection and natural language processing techniques to classify sentiment in Beijing Second Ring for 2016 and 2022. Classified sentiment reaction is analysed and visualized using regression analysis, image segmentation, and word frequency based on land-use distribution to discern underlying factors. The perception affective reaction trend map reveals a shift toward more evenly distributed positive sentiment, while the opinion affective reaction trend map shows more extreme changes. Our mismatch map indicates significant disparities between the sentiments of human perception and opinion of urban areas over the years. Changes in sentiment reactions have significant relationships with elements such as dense buildings and pedestrian presence. Our inconsistent maps present perception and opinion sentiments before and after the pandemic and offer potential explanations and directions for environmental management, in formulating strategies for urban renewal.
keywords Urban Sentiment, Affective Reaction, Social Media, Machine Learning, Urban Data, Image Segmentation.
series CAADRIA
email
last changed 2024/11/17 22:05

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