LGCVGNMar 7, 2023

Deep hybrid model with satellite imagery: how to combine demand modeling and computer vision for behavior analysis?

arXiv:2303.04204v218 citationsh-index: 18
AI Analysis

This work addresses the need for more accurate travel behavior analysis for urban planners and researchers by combining demand modeling and computer vision, though it is incremental as it builds on existing hybrid models with deep learning enhancements.

The study tackled the problem of predicting travel behavior by integrating low-dimensional numeric data and high-dimensional satellite imagery, resulting in deep hybrid models that outperformed traditional demand models and recent deep learning methods in predicting aggregate and disaggregate travel behavior.

Classical demand modeling analyzes travel behavior using only low-dimensional numeric data (i.e. sociodemographics and travel attributes) but not high-dimensional urban imagery. However, travel behavior depends on the factors represented by both numeric data and urban imagery, thus necessitating a synergetic framework to combine them. This study creates a theoretical framework of deep hybrid models with a crossing structure consisting of a mixing operator and a behavioral predictor, thus integrating the numeric and imagery data into a latent space. Empirically, this framework is applied to analyze travel mode choice using the MyDailyTravel Survey from Chicago as the numeric inputs and the satellite images as the imagery inputs. We found that deep hybrid models outperform both the traditional demand models and the recent deep learning in predicting the aggregate and disaggregate travel behavior with our supervision-as-mixing design. The latent space in deep hybrid models can be interpreted, because it reveals meaningful spatial and social patterns. The deep hybrid models can also generate new urban images that do not exist in reality and interpret them with economic theory, such as computing substitution patterns and social welfare changes. Overall, the deep hybrid models demonstrate the complementarity between the low-dimensional numeric and high-dimensional imagery data and between the traditional demand modeling and recent deep learning. It generalizes the latent classes and variables in classical hybrid demand models to a latent space, and leverages the computational power of deep learning for imagery while retaining the economic interpretability on the microeconomics foundation.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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