Wang Xinghua
The Tourism College of Changchun University, Changchun, 130607, Jilin, China.
Northeast Asia Research Center on Leisure Economics, Changchun, 130607, Jilin, China.
Sci Rep. 2024 Dec 2;14(1):29898. doi: 10.1038/s41598-024-81868-z.
This study aims to utilize deep learning technology to optimize rural tourism image, enhance visitor experience, and promote sustainable development. By deploying sensors for real-time monitoring of the environment and visitor flow in rural scenic areas, combined with a Dense Convolutional Neural Network (DenseNet), automatic identification and analysis of rural landscapes are achieved. Using rural tourism along the Yellow River as a case study, this study constructs a tourism image evaluation and optimization model based on big data. The results indicate that the model performs excellently in terms of accuracy and robustness, significantly improving the presentation of rural tourism images. The study shows that realism and service facilities have the greatest impact on rural tourism image, underscoring the value of technological means in optimizing the rural tourism image.
本研究旨在利用深度学习技术优化乡村旅游形象,提升游客体验,促进可持续发展。通过部署传感器对乡村景区的环境和游客流量进行实时监测,并结合密集卷积神经网络(DenseNet),实现对乡村景观的自动识别与分析。以沿黄河乡村旅游为例,本研究构建了基于大数据的旅游形象评价与优化模型。结果表明,该模型在准确性和鲁棒性方面表现出色,显著提升了乡村旅游形象的呈现效果。研究表明,真实性和服务设施对乡村旅游形象的影响最大,凸显了技术手段在优化乡村旅游形象方面的价值。