An image selection method for image representation of tourism destination based on comment text and image data

Xiaojia Huang, Yong Yang, Yezhou Yang, Chen Wang, Liang Guo
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引用次数: 0

Abstract

One of the challenges faced by Diffused Metal-Oxide Semiconductor (DMOs) is how to track the behavior of tourists and provide more comfortable experience for tourists. Nowadays, multi-source tourism big data provides many available information for improving tourists’ experience. For management organizations, in order to achieve better publicity effect, how to choose the appropriate image as the representative of the destination image has become a problem. Based on the review text and image data, this paper proposes a method, Scale-invariant feature transform KMeans (SIFT-KMeans) of selecting the representative image of tourism destination. This method uses the text and image data generated by tourists to carry out a series of analysis and processing, and then feeds back the results to tourists, so as to reflect the greatest interest of tourists. The accuracy and stability of this method is wonderful, and the change of destination image can be reflected through the change of time. The destination management organization can carry out corresponding construction and publicity based on the obtained results.
基于评论文本和图像数据的旅游目的地图像表示的图像选择方法
如何跟踪游客的行为,为游客提供更舒适的体验,是扩散金属氧化物半导体(DMOs)面临的挑战之一。如今,多源旅游大数据为提升游客体验提供了大量可用信息。对于管理机构来说,为了达到更好的宣传效果,如何选择合适的形象作为目的地形象的代表就成为了一个问题。本文在综述文本和图像数据的基础上,提出了一种选择旅游目的地代表性图像的尺度不变特征变换KMeans (SIFT-KMeans)方法。该方法利用旅游者产生的文字和图像数据进行一系列的分析和处理,然后将结果反馈给旅游者,从而体现旅游者的最大兴趣。该方法的准确性和稳定性都很好,并且可以通过时间的变化来反映目标图像的变化。目的地管理机构可以根据获得的结果进行相应的建设和宣传。
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