This study applies the line-of-sight-based visual analysis method proposed earlier to a case study of Harbin, focusing on the city’s central urban area as the research region. The analysis considers the Songhua River and its surrounding buildings and natural landscapes as visual objects, integrating them with the city’s spatial structure to explore the intrinsic relationships within Harbin’s visual space. The analysis specifically examines the visibility and visual prominence of these landscapes within the city, the visual connectivity between different landscapes, and how they fit into the city’s overall spatial framework. Based on the results of the visual analysis, this paper provides planning and design recommendations to protect and enhance Harbin’s visual landscapes, helping to preserve and strengthen the city’s unique character.
4.1. Analysis Method for Selecting Viewing Points
Through multi-factor analysis, we identified the key factors affecting building height and assigned them different weights based on their significance. By collecting vector data on terrain, buildings, roads, mountains, and water bodies, a model is established in ArcGIS, which addresses some limitations of visibility analysis methods in large-scale urban design. This approach is suitable for meeting the economic needs of most cities in their development. However, from the perspective of quantitative precision alone, it may lead to the omission of unique landscapes and historical buildings in urban design.
Therefore, combining visibility analysis with multi-factor analysis can address the limitations of using a single method, making urban design more comprehensive. Visibility analysis refers to modeling the areas of important urban nodes within the range of human sight, controlling the height of buildings in urban areas. This method is mainly applicable for the preservation of historical buildings, which helps to highlight the city’s characteristics, but it also has certain drawbacks. Controlling the urban skyline may lead to the phenomenon where buildings are taller on the sides and lower in the center, similar to a canyon effect. Additionally, traditional control methods typically rely on simple empirical estimates. Thus, the integration of visibility analysis and multi-factor analysis serves to complement this deficiency.
The land use data shown in
Figure 4 indicate that buildings in Harbin are primarily concentrated in the central urban area. Given this, multiple viewpoints are selected within densely built areas to ensure a clear observation of the overall layout of buildings and their interactions with surrounding natural landscapes, such as green spaces and rivers. This serves as a key criterion for selecting viewpoints. Priority is given to locations with open views, such as main roads and plazas, to facilitate an in-depth analysis of the visual impact of building clusters.
Transportation accessibility directly affects the accessibility of observation points. In urban environments, accessibility is a critical factor for residents and tourists to experience visual landscapes, particularly for urban landmarks and public spaces. Buildings in the city center are densely concentrated and well-connected to the road network, facilitating the observation of building layouts (
Figure 5a,b). In areas close to major rivers, the cityscape can be viewed from both sides of the waterway, enabling an analysis of the impact of water bodies on building visibility. The high-rise building clusters offer the advantage of observing the density and layered arrangement of structures from elevated viewpoints. According to POI (Point of Interest) data factors (
Figure 5c), the main urban area has the highest density of POI distributions, indicating its dominant role in the city and its strong contribution to the city’s economic development. Green space analysis (
Figure 5d) shows that green areas are relatively scarce in the main urban area compared to other regions, primarily due to the high density of buildings, with parks and forested areas being comparatively limited. Landscape ecology represents the interaction between natural elements (such as vegetation and water bodies) and urban spaces. These interactions directly influence visual quality by integrating ecological aesthetics into the visibility framework.
Consequently, this study sets viewpoints near landmark buildings to analyze their prominence and visibility within the city skyline. By selecting these factors, the study enables a comprehensive assessment of the visibility in densely built areas and allows for comparisons with surrounding natural landscapes, providing a basis for urban planning and landscape design.
The selection of viewpoints in visual landscape analysis is influenced by several key factors, including the physical accessibility of the location, the surrounding environment, and the vantage point’s ability to capture significant features of the urban or natural landscape. Accessibility plays a critical role, as viewpoints situated along major roads, public spaces, or elevated areas are easier to reach and offer clearer, unobstructed views. Additionally, the spatial arrangement and density of buildings in the area impact how well landmarks or natural features are visible, with open spaces providing better sightlines compared to densely built-up areas. The presence of significant natural elements, such as rivers or green spaces, also contributes to viewpoint selection, as they enhance the visual appeal and interaction between urban and natural landscapes. The prominence and visual impact of the landmark or focal point itself are also key considerations, with viewpoints that highlight the unique characteristics of the landmark, like its height or architectural style, being prioritized. These factors collectively ensure that the selected viewpoints provide a comprehensive and representative visual experience of the landscape while also facilitating the design and preservation of the urban environment.
Figure 5, based on the land use data in
Figure 4, shows that the buildings in Harbin are mainly concentrated in the central urban area, providing a basis for subsequent viewpoint selection. Further analysis, considering four other influencing factors, reveals that the central urban area (indicated by the red circle on the left side of the map) stands out across all indicators, further highlighting its dominant role in the city. Therefore, focusing the selection of landmark buildings and viewpoints in the central urban area not only more effectively reflects the core features of the city’s landscape pattern but also better showcases the overall image and functional distribution of the city. After selecting the appropriate visual factors, we will proceed to statistical analysis to quantify the impact of these factors on the urban landscape.
4.2. Landscape Visual Analysis Based on Multiple Building Clusters
This section provides a detailed explanation of the statistical analysis methods used to evaluate the visibility of urban landscapes. By quantitatively analyzing various visual factors, we can gain a clearer understanding of how these factors influence the visibility of buildings and natural landscapes in the city. These statistical methods were chosen because they allow for the quantification of relationships between different factors, providing data-driven support for urban planners to optimize spatial layouts and enhance the visual experience of the landscape.
First, this study utilized high-resolution LiDAR datasets to accurately capture the elevation and structural details of the buildings, as well as the changes in the surrounding terrain, ensuring vertical accuracy in the models. To further refine the visual features of the buildings, high-resolution satellite imagery was incorporated, providing texture and surface details for the models. Additionally, ground-level photographs and aerial images were processed using photogrammetry techniques to generate detailed 3D texture-mapped models. The overall city model was derived from multiple data sources, which provided the geometric layout of the city and surrounding buildings, ultimately helping to construct an accurate urban environment model. By integrating these data sources and employing advanced 3D modeling and spatial analysis techniques, the models of the Flood Control Monument and Saint Sophia Cathedral were generated. The Flood Control Monument is located at the northern end of Central Street in Daoli District, Harbin, Heilongjiang Province, specifically at the intersection of Stalin Street and Flood Control Alley, near Stalin Park along the Songhua River. Saint Sophia Cathedral is located at 88 Toulong Street, Daoli District, Harbin, Heilongjiang Province.
In the landscape visual analysis of Harbin, the spatial distribution of building clusters has a profound impact on the overall visual experience of the city. The distance between buildings and their relative heights determines the spatial density and sense of openness in the city. Additionally, in Harbin’s visual landscape, the building clusters along both sides of the Songhua River serve as key visual guiding elements. The arrangement and height control of these buildings create visual continuity and also direct citizens’ lines of sight and movement paths within the physical space. Especially at key urban nodes, such as the Flood Control Monument and along Central Street, building clusters are connected through symmetrical layouts and distant structures, shifting the city’s focus from historical landmarks to modern urban landscapes and establishing a unique visual order for Harbin.
In the landscape visual analysis of Harbin, the Flood Control Monument (
Figure 6a) and Saint Sophia Cathedral (
Figure 6b) are two highly representative landmark buildings. They hold significant positions in the city’s historical and cultural heritage, serving as key nodes for selecting visual focal points. Analyzing viewpoint selection for these two landmarks reveals their roles in the city’s spatial layout and their influence on the overall visual experience. Distant Viewpoints: From the opposite bank of the Songhua River or from the Songhua River Bridge, the height and unique shape of the Flood Control Monument are clearly visible against the expansive water background. These distant viewpoints use the open river and sky as a backdrop to highlight the monument’s commemorative and symbolic qualities. Close-Up Viewpoints: From the plaza where the Flood Control Monument is located and nearby pedestrian areas, the monument appears from below at an upward angle. Here, the interaction between the surrounding buildings and the open plaza creates a strong contrast between the monument’s vertical lines and the horizontal space of the plaza.
Figure 7 shows viewpoints selected from five different directions (F1–F5, S1–S5) arranged around a landmark building in Harbin. The figure presents the front view of the building as seen from both a top-down plan view and an actual photograph, along with two different 3D sectional views (left view and right view) from distinct angles. Based on these statistical results, the next step is to further explore the visual impact of building clusters through spatial layout analysis.
4.3. Exploring the Relationship Between Building Distribution and Visual Impact
This study conducts a visibility analysis of a landmark building in Harbin, examining its relationship with the spatial distribution of surrounding buildings. Five representative viewpoints were selected to perform a skyline visibility analysis, aimed at evaluating the visual impact of the building from different perspectives. Using the skyline analysis method, visibility was quantitatively and qualitatively assessed from five different viewpoints around the landmark. This method evaluates the prominence of the building in the urban landscape by analyzing its height within the line of sight, the degree of obstruction, and its impact on the surrounding scenery.
As shown in
Figure 8, Impact of Perspective on Visibility: From closer viewpoints (such as the city center), the landmark building’s height allows it to stand out among surrounding buildings, ensuring high visibility. However, as the viewpoint distance increases, the visibility of the landmark is gradually diminished by variations in surrounding high-rise buildings and terrain. The landmark’s visibility is reduced in areas with taller surrounding buildings, as shown by the skyline analysis. In areas densely populated with tall buildings, the landmark’s skyline prominence is reduced, whereas in areas with lower or open buildings, its visibility is significantly enhanced, becoming a focal point in the visual landscape.
Viewpoint F1, being directly facing the building, offers the highest visibility, allowing observers to intuitively perceive the overall structure and grandeur of the building. Viewpoints F2 and F3 provide oblique side views of the building, maintaining relatively high visibility and effectively showcasing the side profile of the structure. Viewpoints F4 and F5 gradually move away from the building and shift outward, which may result in partial obstruction by surrounding buildings and vegetation, leading to a relative decrease in visibility.
As shown in
Table 2, viewpoint F1 is rated as “Very High Visibility” (Grade A) and covers the largest area, accounting for 24.85% of the total area. This indicates that F1 provides the best visual experience and is the most ideal position for observing the target building or landmark. In terms of layout, F1 is likely situated in a position that directly faces the building with minimal obstructions, thus achieving the highest visibility level. Viewpoints F2 and F3 are rated as “High Visibility” (Grade B) and “Moderate-High Visibility” (Grade C), with area proportions of 19.97% and 18.66%, respectively. This suggests that, while these viewpoints do not offer as high visibility as F1, they still allow for a relatively good view of the building’s main features, making them suitable as secondary observation points. These viewpoints are likely positioned at the side or a bit further from the building, resulting in slightly reduced visibility. Viewpoints F4 and F5 are rated as “Low Visibility” (Grade D), with area proportions of 15.32% and 12.91%, respectively. These areas have poorer visibility, and observers may experience partial obstruction from surrounding buildings or vegetation, making it difficult to view the target building in its entirety. These viewpoints are often located behind the building, in corners, or in areas blocked by other tall structures.
From
Table 3, it can be seen that viewpoint S2 was rated as Extremely High Visibility (A Grade), making it the most visible viewpoint. From this perspective, observers can achieve the best visual experience, with the building’s appearance and details clearly visible, without significant obstruction.
Viewpoint S1 was rated as High Visibility (B Grade). This viewpoint still allows for a good observation of the building’s main features, although some side aspects may be obstructed, resulting in an overall visual effect slightly inferior to S2.
The other viewpoints (S3, S4, S5) were categorized as Medium-High Visibility (C Grade). These viewpoints have weaker visibility, with portions of the building obscured, preventing observers from fully observing the complete structure of the building.
The experimental results indicate that the visibility of the building is closely related to its coverage area. The table shows that the area within the Extremely High Visibility (A Grade) range is 66.42 m2, accounting for 30.97% of the total area. This means that approximately one-third of the area can achieve the best observation effect.
The area of the High Visibility (B Grade) zone is 42.64 m2, accounting for 18.70% of the total area. This area has slightly lower visibility than Grade A but still maintains a high level of visibility.
The Medium-High Visibility (C Grade) area is more widely distributed, occupying the remaining portion of the total area. The visibility areas for S3, S4, and S5 are 26.73 m2, 21.85 m2, and 9.42 m2, respectively, with proportions of 12.19%, 11.69%, and 11.71%.
4.4. Calculation Based on Spatial Visual Quantification and Viewpoint Coupling
The calculation of viewpoint coupling based on spatial visual quantification is primarily used to analyze the visual coverage and mutual influence among multiple viewpoints, thereby optimizing the visibility of buildings, urban landscapes, or landmarks. By coupling multiple viewpoints, the overlapping visibility ranges, independence, and contribution values of each viewpoint can be analyzed to achieve more precise urban planning and landscape design.
By calculating the coupling coefficients between various viewpoints, the shared visibility range of multiple viewpoints can be assessed. The coupling coefficient represents the degree of visual contribution and redundancy between viewpoints. The calculation formula is as follows:
where
Aij represents the area of overlap between the visibility regions of viewpoint i and viewpoint j, while
Ai and
Aj represent the visibility areas of viewpoint iii and viewpoint j, respectively. By calculating the degree of overlap between the visibility domains of the viewpoints, the independence and complementarity of each viewpoint can be assessed. If two viewpoints have a high degree of overlap in their visibility domains, it indicates that their contributions are redundant. Conversely, if there is minimal overlap, it suggests that the two viewpoints have good complementarity and are suitable for coupling design.
From the viewpoints selected in
Figure 9’s aerial perspective images,
Figure 9a captures an expansive perspective of the Songhua River Basin, showcasing the surrounding environment of the Flood Control Memorial Tower. The scene includes a significant portion of water bodies, vegetation, and urban buildings, illustrating the prominent position of the Flood Control Memorial Tower as one of the core landscapes in the city, and its integration with both natural and urban elements. This perspective offers a direct view of the riverside landscape layout, as well as the spatial relationship between the tower, the river, and the city.
Figure 9b is taken from a more elevated angle, primarily displaying a comprehensive view of the Flood Control Memorial Tower and its surrounding square layout. This perspective places the memorial tower at the center of the frame, with the greenery and square space clearly visible, reflecting the openness of this landmark and its function as an urban public space.
Figure 9c presents a frontal approach towards Saint Sophia Cathedral, highlighting its unique Byzantine architectural features. The surrounding buildings and plaza are included, creating an overall atmosphere rich in history and urban vitality. This perspective also emphasizes the cathedral’s central role as a significant landmark within the cultural landscape of the city.
Figure 9d shows a side view of Saint Sophia Cathedral, where its onion-shaped dome contrasts with the surrounding modern buildings, highlighting the connection between historic and modern architecture. This perspective also underscores the cathedral’s prominent position in the city.
As shown in
Figure 10, these two sets of images, respectively, display the multi-viewpoint 3D model visibility analysis of the Flood Control Memorial Tower (F1–F5) and Saint Sophia Cathedral (S1–S5). Each set of images is captured from different perspectives, demonstrating the spatial relationship between the landmark and its surrounding environment.
As shown in
Figure 11, in the two sets of viewpoints (F1–F5 and S1–S5), the sky occupies the largest proportion, generally above 30–40%, indicating a significant amount of open space around the two landmark buildings, with the sky having a substantial visual share in the landscape. Among S1–S5, the sky proportion is higher in S1 and S2, while it is slightly lower in S3, S4, and S5, which may be related to the density and height of the surrounding buildings.
In the viewpoints F1–F5 and S1–S5, the proportion of vegetation is quite similar, typically between 10 and 20%. The distribution of vegetation is balanced, indicating a certain level of greenery around both landmarks, though it does not dominate the landscape. Buildings have a higher proportion in S1–S5, especially in S4 and S5, suggesting a denser built environment around Saint Sophia Cathedral, resulting in a more enclosed space. In contrast, the proportion of buildings in F1–F5 is slightly lower, particularly in viewpoints F2 and F3, indicating a more open area around the Flood Control Memorial Tower. The increased proportion of buildings in the Saint Sophia Cathedral viewpoints reflects that the landmark is surrounded by buildings, creating a stronger sense of enclosure visually.
The proportion of ground coverage is relatively stable in both sets of viewpoints, at around 10–20%. In the viewpoints of the Flood Control Memorial Tower (F1–F5), the proportions of ground and water also reflect the influence of the Songhua River waterfront space. In viewpoints F1 and F2, the proportion of water is relatively high, indicating that these viewpoints are closer to the Songhua River. In the viewpoints of Saint Sophia Cathedral (S1–S5), the proportion of both ground and water is lower, mainly because it is located away from the waterfront and closer to the urban core area.
Through the use of the Analytic Hierarchy Process (AHP), we conducted a weighted analysis of urban landscape visibility. Specifically, AHP was applied to calculate the weights of evaluation factors for two architectural landmarks (such as the Flood Control Memorial Tower and Saint Sophia Cathedral) as well as the landscape of the Songhua River Basin. First, urban landscape visibility [
29] was set as the overall objective level, with key criteria factors selected in the criteria level, including relative slope, visual probability, prominence, and relative visibility distance. Subsequently, we constructed pairwise comparison matrices for each criterion, combined with the matrix scales and their meanings (as shown in
Table 1), to determine the values in each judgment matrix and rank the importance of each evaluation factor in the system.
In this process, we used yaahp 10.3 software to establish the hierarchical model and perform statistical analysis, inputting the comparative importance values of the criteria to determine the weights of the four evaluation factors, namely, relative slope, visual probability, prominence, and relative visibility distance. Based on the experimental results presented in the charts (viewpoints F1–F5 and S1–S5), we analyzed the visibility attributes of each viewpoint, including sky, vegetation, buildings, ground, and water.
To ensure the reasonableness and scientific validity of the weights of each evaluation factor, we constructed pairwise comparison matrices for each criterion and used yaahp software for analysis. This process helped quantify the role of each viewpoint in urban landscape visibility, resulting in more objective and systematic evaluation results, thus providing significant scientific evidence and planning recommendations for urban planning and visual landscape preservation.
As shown in
Figure 12, this is a hierarchical structure diagram for visual factor statistical analysis. It categorizes visual factors into four main types: relative slope, relative distance, visual probability, and visibility. Each category includes specific value ranges to quantify the attributes of each factor. These factors are used to evaluate and analyze the visibility of different landscape areas.
Figure 13 illustrates the key spatial elements in the urban landscape of Harbin and their interrelationships. The landmark buildings, road spaces, landscape spaces, and architectural spaces in the figure collectively form the visual and functional structure of the city. Through red arrows and numerical markings, the diagram highlights the importance and spatial positioning of these elements in the city. Landmark buildings, such as “Landmark Building 1” and “Landmark Building 2”, not only represent the city’s history and culture but also, through their unique forms and locations, become the core of the urban landscape. Road spaces play a role in connecting different areas and guiding traffic flow in the city; they are not only paths for movement but also visually influence people’s movement trajectories. Landscape spaces, mainly including green spaces and open areas, contrast with the surrounding buildings and roads, adding openness to the city and integrating natural elements, enhancing both ecological and aesthetic value. Architectural spaces showcase the building density and layout of the city center, determining the city’s spatial sense and structural characteristics. These spaces interact with roads and landscape spaces, influencing the city’s visual form. Through the combination of these spatial elements,
Figure 13 effectively demonstrates how Harbin’s urban landscape is shaped by the interconnections and functions of various spaces, providing an in-depth spatial analysis perspective for urban planning and design. The figure uses red dots to mark 23 viewpoints, which are evenly distributed across the study area based on scale calculations, highlighting key landmarks such as Landmark Building 1 (the Flood Control Monument) and Landmark Building 2 (St. Sophia Cathedral). The road space traverses the area, serving not only as a functional transportation corridor but also as a visual guide directing sightlines to specific targets. The landscape space showcases the importance of green pathways and open public spaces, while the architectural space reflects the dense urbanized core and its impact on the visual landscape. By analyzing the connections between these viewpoints and key landscape elements, the figure reveals the complex interactions among visual landscape elements.
Figure 14 illustrates the distribution characteristics of different elements (water bodies, buildings, vegetation, terrain, soil, and others) across viewpoints (V1–V23) and regions (A1–A14) in an urban area. The analysis reveals that water bodies occupy a significant proportion in many regions, particularly in A1, A2, and A7, indicating that these areas are likely close to rivers or lakes, serving as important natural landscapes within the city. Buildings are primarily concentrated in the urban core areas, such as A3, A10, and A11, reflecting high building density in these regions, which are likely central urban zones. Vegetation is more distributed in peripheral regions, such as A4, A12, and A13, suggesting that these areas may consist of green belts, parks, or nature reserves. Terrain and soil are mainly concentrated in A5 and A8, potentially representing hills, exposed soil, or areas with lower levels of development. Other elements are scattered and may be associated with industrial zones or special functional areas. Overall, the interaction between viewpoints and regions reveals the visual characteristics of urban functional zoning: core areas are dominated by buildings and water bodies, showcasing a combination of functionality and natural landscapes; peripheral areas are dominated by vegetation, highlighting their ecological value; and mixed areas, such as A7 and A8, are rich in elements, representing a fusion of natural and artificial landscapes.
The results in
Table 4 indicate, in the comparison with other factors, a score of 1 indicates equal relative importance. In the comparison between relative slope and relative distance, a score of 2 indicates that relative slope is considered more important than relative distance. The final weight of 0.2707 suggests that it has a significant influence on the overall landscape visibility analysis, but it is not the most important factor.
The importance of relative distance is reflected in the pairwise comparison, where it scored 2 and 3 compared to relative slope and visual probability, respectively. With a weight of 0.4182, it is the highest among all the factors, indicating that relative distance is the most critical factor in the visibility analysis.
Visual probability scored relatively low in the pairwise comparison, particularly against relative distance, with a score of 0.3333, indicating relatively low importance.
In comparison with other factors, such as relative slope and relative distance, visibility scored 0.5, indicating a lower level of importance. With a weight of 0.1906, it is at a moderate level but still lower than the relative slope and relative distance, suggesting its influence is relatively limited.
The study of visual landscapes generally involves establishing evaluation models that guide the visual planning of urban landscapes based on the evaluation results. There are three main evaluation methods for visual landscapes internationally: the public perception-based method, the expert design method, and the combined expert and public perception method. The public perception-based method directly addresses the subjective preferences of viewers towards visual landscapes, with visual evaluation indicators varying in applicability depending on different environments and landscape types. The expert design method relies on the physical attributes of the landscape and involves professionals using multi-criteria evaluation (MCE), logistic regression (LR), and other methods to assess visual quality. The combined expert and public perception method is currently a more comprehensive evaluation approach that bridges the gap between expert and public perceptions.
As shown in
Table 5, through expert judgment, we constructed a pairwise comparison matrix and calculated the relative weights of each main indicator. The scoring of each indicator was based on its relative importance, and the results were input into the matrix for the calculation of the final weights.
Based on the three-dimensional spatial ranking chart, urban landscape areas classified as higher-ranked (Level 1 and Level 2) are mainly distributed around landmarks such as the Songhua River Basin, the Flood Control Memorial Tower, and Saint Sophia Cathedral. These areas are characterized by rich vegetation and steep slopes.
The mid-level areas (Level 3) are primarily located in foreground zones with steeper slopes, positioned at the boundary between flatlands and hilly terrain, featuring diverse landscape types.
Lower-ranked areas (Level 4 and Level 5) are mainly found in mid-view and distant areas, dominated by relatively flat farmland. Vegetation in these areas is sparse, with roads often inaccessible, or the view is obstructed by terrain features, such as the less visible regions behind hills.
The relative distance between the landscape and observation points significantly impacts its ranking, underscoring its importance in determining the visual prominence of urban landscapes.