A New Approach to Landscape Visual Quality Assessment from a Fine-Tuning Perspective

IF 3.2 2区 环境科学与生态学 Q2 ENVIRONMENTAL STUDIES Land Pub Date : 2024-05-13 DOI:10.3390/land13050673
Rong Fan, Yingze Chen, Ken P. Yocom
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Abstract

Various methods for evaluating the visual quality of landscapes have been continuously studied. In the era of the rapid development of big data, methods to obtain evaluation data efficiently and accurately have received attention. However, few studies have been conducted to optimize the evaluation methods for landscape visual quality. Here, we aim to develop an evaluation model that is model fine-tuned using Scenic Beauty Evaluation (SBE) results. In elucidating the methodology, it is imperative to delve into the intricacies of refining the evaluation process. First, fine-tuning the model can be initiated with a scoring test on a small population, serving as an efficient starting point. Second, determining the optimal hyperparameter settings necessitates establishing intervals within a threshold range tailored to the characteristics of the dataset. Third, from the pool of fine-tuned models, selecting the one exhibiting optimal performance is crucial for accurately predicting the visual quality of the landscape within the study population. Lastly, through the interpolation process, discernible differences in landscape aesthetics within the core monitoring area can be visually distinguished, thereby reinforcing the reliability and practicality of the new method. In order to demonstrate the efficiency and practicality of the new method, we chose the core section of the famous Beijing–Hangzhou Grand Canal in Wujiang District, China, as a case study. The results show the following: (1) Fine-tuning the model can start with a scoring test on a small population. (2) The optimal hyperparameter setting intervals of the model need to be set in a threshold range according to different dataset characteristics. (3) The model with optimal performance is selected among the four fine-tuning models for predicting the visual quality of the landscape in the study population. (4) After the interpolation process, the differences in landscape aesthetics within the core monitoring area can be visually distinguished. We believe that the new method is efficient, accurate, and practically applicable for improving landscape visual quality evaluation.
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从微调角度评估景观视觉质量的新方法
人们一直在研究各种景观视觉质量的评价方法。在大数据飞速发展的时代,高效、准确地获取评价数据的方法受到了关注。然而,针对景观视觉质量评价方法的优化研究却很少。在此,我们旨在开发一种利用风景美学评价(SBE)结果进行模型微调的评价模型。在阐明该方法时,必须深入探讨完善评价过程的复杂性。首先,对模型的微调可以从小范围的评分测试开始,这是一个有效的起点。其次,确定最佳超参数设置需要根据数据集的特点在阈值范围内建立区间。第三,从经过微调的模型库中选出表现最佳的模型,对于准确预测研究人群中景观的视觉质量至关重要。最后,通过插值过程,可以直观地分辨出核心监测区域内景观美学的明显差异,从而加强了新方法的可靠性和实用性。为了证明新方法的高效性和实用性,我们选择了中国吴江区著名的京杭大运河核心段作为案例。结果显示如下:(1) 对模型的微调可以从小范围的评分测试开始。(2) 模型的最优超参数设置区间需要根据不同的数据集特征设置阈值范围。(3) 从四个微调模型中选出性能最优的模型,用于预测研究人群的景观视觉质量。(4) 经过插值处理后,可以直观地区分核心监测区域内的景观美学差异。我们认为,新方法在改善景观视觉质量评价方面是高效、准确和实用的。
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来源期刊
Land
Land ENVIRONMENTAL STUDIES-Nature and Landscape Conservation
CiteScore
4.90
自引率
23.10%
发文量
1927
期刊介绍: Land is an international and cross-disciplinary, peer-reviewed, open access journal of land system science, landscape, soil–sediment–water systems, urban study, land–climate interactions, water–energy–land–food (WELF) nexus, biodiversity research and health nexus, land modelling and data processing, ecosystem services, and multifunctionality and sustainability etc., published monthly online by MDPI. The International Association for Landscape Ecology (IALE), European Land-use Institute (ELI), and Landscape Institute (LI) are affiliated with Land, and their members receive a discount on the article processing charge.
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