1. Introduction
As a specific spatial location in cities, urban waterfronts have played an important role in the history of urban development [
1]. Historically, waterfronts were mainly used for industry, manufacturing, and transportation [
2]. In the postindustrial era, the introduction of leisure, recreation, and tourism functions into waterfronts has gradually made waterfront redevelopment a global phenomenon [
3,
4]. Today, waterfronts have become an important tool for shaping the image of cities and promoting economic investment [
5,
6,
7,
8]. They are also important public open spaces in the eyes of citizens [
9]. As an essential part of the waterfront, the urban lakefront space is also an important open space and urban landscape [
10], and has a multifaceted positive impact on human health and well-being [
11]. Current research on urban lakefront areas is mostly focused on landscape design and ecosystem quality [
12,
13,
14,
15,
16]. Moreover, the research on comprehensive landscape quality is still in its infancy.
The urban lakefront landscape is the area where land and water meet adjacent to the lake; it is also the aesthetic experience of the area [
17]. Studies have shown that the comprehensive quality of the lakefront landscape is the result of the joint action of physical elements of space and public sentimental perception [
18,
19]. Therefore, its evaluation relies on two aspects, namely objective spatial quality and subjective sentimental perceptions [
20,
21]. Space and sentiment are essentially circular [
22]. Sentiments assume a bridging role between human perceptions and the surrounding environment and reflect changes in one’s attitudes and experiences of the environment and people around them [
23,
24]. Within a given space, spatial quality affects public sentiment [
25]. The results of sentiment analysis can reflect the public sentiment state in the space and be used for comprehensive landscape quality assessment [
26,
27].
In the existing studies, the evaluation of objective spatial quality is mostly based on qualitative discussion and analysis through on-site social surveys, and the assessment of subjective sentiment perceptions is mainly conducted based on tracking surveys, field observations, or psychological experiments [
28,
29,
30]. These methods are usually costly and labor intensive. They also suffer from limited sample sizes and time-consuming problems. The emergence of big data and open data has brought new ways of data collection, providing methods for large-scale quantitative measurements [
31]. Urban street view images and social media data have many advantages, such as wide coverage, low acquisition cost, timeliness, and abundance, which can enable large-scale automated assessment of urban environments and public perceptions [
32].
Urban street view images cover a wide range of areas and show the real form of the streetscape from a human-centered perspective, providing an accurate and objective data source for assessing the quality of urban space [
33,
34]. Some scholars have started to judge the physical quality of the environment in urban large-scale study areas based on street view images; the assessment results based on street view images are generally consistent with those based on field observations and have a high accuracy rate [
35,
36,
37,
38]. This approach also increases the possibility of large-scale automatic assessment of urban spatial quality based on street view images. In China, the Baidu Map Street View (BMSV) image dataset records street view images of more than four hundred cities and thousands of counties [
39]. It also provides street view information with high resolution and a large amount of detailed information [
40]. The use of street view images in combination with machine learning algorithms can extract useful visible information from complex street environments [
41].
Social media data are an important data source that reflects the public’s thoughts and attitudes toward a place. The emergence of social media has changed the way people interact as social actors and the interactions of urban networks, making it useful for understanding public reactions and interactions to a landscape or place [
42,
43]. In particular, social media data contain geolocation information, which makes evaluating urban environments based on public perceptions possible. Sina Microblog, the most popular social networking platform in China [
44], had 462 million monthly active users and 200 million daily active users at the end of the fourth quarter of 2018 [
45]. Its large amount of data provides a representative measure of the entire community.
Wuhan, the largest city in Central China, was used as the subject of this study. Wuhan is the city with the largest number of urban lakes in China, and its lake types and land use patterns in lakefront areas are relatively rich [
46], which is representative and of reference value. Similar to other cities in the world, Wuhan’s lakes have gradually been surrounded by the city and have become inner-city lakes during the process of urbanization [
47]. Moreover, due to the excessive and unreasonable urban expansion [
48,
49], the natural landscape has been replaced by the built environment [
46,
50], hindering the public’s access to the natural landscape. In recent years, the public’s pursuit of a high quality of life has been increasing, and the public’s concern and demand for lakefront landscapes has been growing. Previous researchers have mostly focused on ecological restoration strategies for Wuhan city’s lakefront landscape [
51], land use development changes in the lakefront area [
52], or the quality of the lakefront landscape of a single or a few urban lakes [
53,
54]. Little attention has been paid to the distribution of spatial qualities of the lakefront landscape and its level of coupling and coordination with public sentiment at the municipal level, which is important for the future construction of a lakefront area. Therefore, we decided to carry out a study to evaluate the coupling and coordination of lakefront landscape spatial quality and public sentiment in Wuhan, a representative lake city, in order to help city managers find key areas for future planning and development of the lakefront area.
Following the basis of previous research, multi-source big data and geospatial analysis methods can be used in a comprehensive evaluation study of Wuhan’s lakefront landscape. We extracted Baidu street view images and microblog text data in Wuhan’s lakefront area to evaluate on a large scale the coupling and coordination of objective spatial quality and subjective public sentiment of comprehensive landscape quality by using machine learning and sentiment analysis methods, respectively. The purpose of the study is threefold: first, to study the distribution of spatial quality and public sentiment of a Wuhan lakefront landscape based on street view images and microblog texts, respectively; second, to explore the correlation and relevance between the two and to establish a planning link from spatial quality to public sentiment; third, to characterize the distribution of spatial coupling and coordination degree between spatial quality and public sentiment in each lakefront landscape, to judge the coordination type of each analysis unit, and to determine the key areas to be optimized. Finally, the spatial coupling and coordination degree of spatial quality and public sentiment of each lakefront landscape are characterized, the coordination type of each analysis unit is judged, and the key areas that need to be optimized are determined to provide a theoretical basis and empirical research foundation for future planning, design, and renewal of urban lakefronts.
5. Discussion
Urban lakes have natural and social functions [
10]. They are also an important part of urban open spaces with far-reaching impacts on urban development [
107]. In previous studies, much attention has been paid to the ecosystem health of lakes [
108,
109]. As an important place for active public socialization [
110], comprehensive landscape quality in lakefront areas profoundly affects public physical and mental health [
111]. However, objective assessment of spatial quality does not necessarily imply the same subjective assessment [
112,
113]. Moreover, two aspects must be evaluated comprehensively: (a) whether the environment has a good objective basis; (b) whether the people are satisfied with the environment. In this study, Wuhan City, famous for its lake resources, is taken as an example. Multisource big data are also used to assess and describe quantitatively the distribution characteristics and coupling coordination between spatial quality and public sentiment in the lakefront area based on Baidu street view images and microblog text data on a large scale from a human perspective, to explore the influence of street view elements on public sentiment, and to characterize the type of coupling coordination between subjective and objective assessments.
A remarkable geographical difference exists between spatial quality and public sentiment evaluation results of the 21 lakefront areas in Central Wuhan. Further exploration revealed the intrinsic linkage of this difference. Spatial quality can remarkably alleviate passive public emotion. In particular, lakefront areas with high green visibility can strengthen active public emotion, and lakefront areas with high sky visibility and natural revetment can improve passive emotion. High green visibility and natural revetment imply a good ecological environment, which is beneficial to the public’s physical and mental health. In comparison, open skies can reduce depression and make people feel happy. A lakefront with high water visibility weakens active public emotion but does not remarkably correlate with passive public emotion. This finding is different from previous studies, probably because the indicator of “water visibility” in the present study refers to the perception of water bodies by vehicle passengers on traffic roads in the lakefront area. The higher the visibility of water bodies is on traffic streets, the closer the traffic roads are to the water bodies, i.e., a large proportion of land traffic in the lakefront area is close to the lake, resulting in a considerable negative impact on the lake. Therefore, the considerable visibility of water bodies on traffic-oriented streets has a certain degree of weakening on the active emotion but does not have an impact on the passive emotion.
The four types of coupling coordination between the spatial quality and public sentiment of the lakefront landscape show multigroup distribution on the map. The HH-matched areas are basically highly coupled with high coupling coordination. These areas are often urban parks and green areas, scenic areas, universities, and high-class neighborhoods. The LL-matched areas are consistent with those with low coupling and low coupling coordination. The probable reason is that the rapid expansion of land and large population concentration in the ancient city of Wuchang to the east historically led to imperfect planning of the area, immature ecological landscape construction, and poor environmental management and maintenance. However, the addition of supporting facilities and functional mixing of the plots have slightly improved the public sentiment in some areas. Therefore, the spatial quality of these areas is in low harmony with the public mood. HL is slightly distributed, but LH is concentrated and densely distributed in the lakefront areas close to urban centers. This finding indicates that the ecological landscape construction of some lakefront streets in Wuhan is neglected. Given the impact of space quality on public sentiment, the construction department should strictly plan and manage the lakefront landscape, actively solve the problems that hinder the development of lakes, and bring a superior aesthetic experience to the public.
The spatial quality of most areas is highly coupled with public sentiment. This study identifies the specific effects of individual streetscape elements on public sentiment, reminding planners that they can effectively improve the lakefront landscape by targeting the level of some particular elements. For example, planners can improve the spatial quality of the lakefront landscape by increasing greenery visibility, sky visibility, and revetment naturalness of the lakefront streets, reducing the negative impact of land traffic on active public emotion, enhancing active public emotion, and alleviating passive emotion, ultimately achieving the effect of improving the comprehensive quality of the lakefront landscape.
This study could provide meaningful insights into academic research and practical experience in the field. The optimization of the lakefront landscape should first and foremost harmonize the relationship between man and nature. The results of this study show that adequate vegetation, wide skies and natural barges of water on the lakefront streets not only create a natural and human landscape conducive to an improved microclimate, but also optimize the public sentiment state in the lakefront. Although in recent years, Wuhan has developed a series of lake protection policies to strengthen lake management and lakefront area management, such as the Wuhan Lakes Protection Regulations and the Wuhan Lakes Protection Master Plan, today some of Wuhan’s lakefront landscapes are still not at a good level, and city managers continue to pay insufficient attention to lakefront streetscapes. Therefore, planners should be wary of the destruction of natural landscapes caused by urban overdevelopment. The natural landscape elements of the lakefront streets should be preserved and optimized as far as possible, and efforts should be made to reconcile the contradictions between the different types of land use in the lakefront area. In addition, it is important to actively listen to public opinion and feedback in order to create a positive effect where spatial quality and public sentiment develop in harmony and promote each other.
6. Conclusions
The article characterizes the spatial quality and public sentiment distribution of Wuhan’s lakefront landscape through machine learning of street view images and sentiment analysis of microblog text. Based on the coupling and coordination analysis, the type of coupling and coordination between the two is determined, and the key areas of the lakefront landscape that need to be optimized and improved are identified. The main findings are as follows: (1) There are significant geographical differences in the distribution of spatial quality and public sentiment in Wuhan’s lakefront area. Hot and cold spots of spatial quality are distributed in a contiguous pattern, while hot and cold spots of public sentiment are distributed in multiple clusters. (2) There is a strong coupling coordination and correlation between spatial quality and public sentiment. The good quality of the lakefront landscape space can explain 35.5% of the passive emotion reduction. High green visibility, high sky visibility and natural revetment have a significant positive effect on public sentiment, and high visibility of water has a negative impact on public sentiment. (3) There is significant spatial heterogeneity in the types of coupled coordination. The distribution of HH regions coincides with regions of high coupling coordination and the distribution of LL regions coincides with regions of low coupling coordination. HL is less distributed while LH is concentrated and densely distributed in the lakefront area near the city center. With these findings, this study can help planners identify key areas for lakefront landscape enhancement.
This study improves on the shortcomings in the current comprehensive quality assessment of Wuhan’s lakefront landscape and provides a reference for future policy practice. At the same time, it avoids the disadvantages of traditional research methods, which have few data points, high costs and low efficiency. It enables large-scale automatic assessment of spatial quality and public sentiment with the help of machine learning, sentiment analysis and other technologies. The coupled coordination evaluation can identify the HL, LH and LL areas between spatial quality and public sentiment of the lakefront landscape, where the future lakefront landscape needs to be improved. Due to the specificity of the research subject, the methodological framework and analysis process in this study can be used as a reference for the study of lakefront landscapes in other cities, with policy and practical guidance.
However, there are limitations to this study. For example, Baidu Street View images are in-car images and data are still missing for some areas that are inaccessible to street view vehicles. Moreover, the street view images are not fully representative of the pedestrian visual experience and may affect the overall rating. Furthermore, Sina Microblog users are mostly young people, which has an impact on the statistical accuracy of public sentiment in lakefront area. Therefore, in future research, we will use more advanced techniques to combine in situ observations with geographic big data, including complementary data from areas inaccessible to the street view vehicles to improve data on the spatial quality of the lakefront landscape. The microblog text will also be analyzed in more depth to extract a more accurate picture of public attitudes towards the lakefront area.