Seemo: A new tool for early design window view satisfaction evaluation in residential buildings
Jaeha Kim, Michael Kent, Katharina Kral, Timur Dogan

TL;DR
Seemo is a new tool that combines a survey-based satisfaction prediction model with a ray-casting view analysis to evaluate outdoor view quality in early residential building design, aiding architects in making informed decisions.
Contribution
This paper introduces a novel integrated approach combining a data-driven satisfaction prediction model with a ray-casting tool for early design view assessment in architecture.
Findings
Prediction model outperforms existing frameworks in accuracy.
High reliability of view satisfaction predictions across diverse scenarios.
Effective integration of the model into CAD for practical early design use.
Abstract
People spend approximately 90% of their lives indoors, and thus arguably, the indoor space design can significantly influence occupant well-being. Adequate views to the outside are one of the most cited indoor qualities related to occupant well-being. However, due to urbanization and densification trends, designers may have difficulties in providing vistas and views to the outside with an assortment of content, which can support the needs of their occupants. To better understand occupant view satisfaction and provide reliable design feedback to architects, existing view satisfaction data must be expanded to capture a wider variety of view scenarios and occupants. Most related research remains challenging in architectural practice due to a lack of easy-to-use early-design analysis tools. However, early assessment of view can be advantageous as design decisions in early design, such as…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
