Multi-source data analysis and calculation is an important part of urban planning and urban governance. Taking the Northern District of Macau as an example, this study combines spatial syntax with POI data based on multiple indicators such as the integration, selectivity, and depth of the urban road network, and aggregates the spatial characteristics and functions of urban roads on the basis of multi-source data. The spatial coupling relationship is evaluated, and suggestions for optimizing the urban road network and functional layout are proposed, aiming to provide methodological reference and guidance for the urban planning, functional layout, and development and construction of high-density urban areas.
Different from the existing empirical landscape measurement methods, this article explores an effective method to quantify the landscape through the use of computer vision perception. First, based on image semantic segmentation technology, a large number of excellent case images are put into image semantic segmentation and annotation tools for image segmentation. Secondly, the image semantic segmentation is used to quantitatively analyze the landscape space elements of the old urban site, and obtain the data value of each landscape element in the excellent case, which provides a reference for the design of the element ratio data basis. Finally, it is applied to the street space in the old city of Macau to perform a quantitative analysis of the computer vision perception of the streets in the old city. Get quantitative suggestions for landscape improvement, and provide new methods for quantitative research and transformation of old urban areas.