CYCVJan 22, 2019

Quantifying Legibility of Indoor Spaces Using Deep Convolutional Neural Networks: Case Studies in Train Stations

arXiv:1901.10553v120 citations
Originality Synthesis-oriented
AI Analysis

This provides a reliable quantitative method for evaluating indoor space legibility, which impacts human behavior and space utilization efficiency, but is incremental as it applies an existing DCNN method to a new domain.

The paper tackled the problem of quantitatively measuring legibility in indoor spaces, which was previously studied only through surveys and simulations, by using a Deep Convolutional Neural Network (DCNN) to model legibility, achieving 98% top-1 accuracy and validating results with 4,015 human samples.

Legibility is the extent to which a space can be easily recognized. Evaluating legibility is particularly desirable in indoor spaces, since it has a large impact on human behavior and the efficiency of space utilization. However, indoor space legibility has only been studied through survey and trivial simulations and lacks reliable quantitative measurement. We utilized a Deep Convolutional Neural Network (DCNN), which is structurally similar to a human perception system, to model legibility in indoor spaces. To implement the modeling of legibility for any indoor spaces, we designed an end-to-end processing pipeline from indoor data retrieving to model training to spatial legibility analysis. Although the model performed very well (98% top-1 accuracy) overall, there are still discrepancies in accuracy among different spaces, reflecting legibility differences. To prove the validity of the pipeline, we deployed a survey on Amazon Mechanical Turk, collecting 4,015 samples. The human samples showed a similar behavior pattern and mechanism as the DCNN models. Further, we used model results to visually explain legibility in different architectural programs, building age, building style, visual clusterings of spaces and visual explanations for building age and architectural functions.

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