利用ResNet进行旅游景点分类

Nanda Maulina Firdaus, D. Chahyati, M. I. Fanany
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引用次数: 3

摘要

智慧旅游是描述旅游者对信息通信技术新兴形态的一个关键词。智能旅游的一个应用是对旅游景点进行自动分类,其中的数据以游客拍摄的照片的形式呈现。然而,旅游景区分类在实际应用中存在一些问题。首先,在一个地方可能有不同的物体和特征。其次,在某些地方可能有类似的架构,因此系统可能难以对这些地方进行分类。在本研究中,我们使用ResNet50对雅加达和德波克的旅游景点进行了研究。我们将本研究分为2个场景。场景1是一个有12个类的模型,场景2是一个有16个类的模型。结果是ResNet50已经能够处理这两个研究问题,虽然还没有最大化,场景1的平均准确率为92.17%,场景2为93.75%。
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Tourist Attractions Classification using ResNet
Smart tourism is a keyword for describe the tourist on emerging forms of ICT. One application of smart tourism is to classify tourist attractions automatically, where the data in the form of pictures taken by tourists. However, there are some problems in application of tourist attractions classifications. First, in one place may have different objects and traits. Second, in some places may have a similar architecture, so it could be difficult for the system to classify the places. In this study, we focused on the tourist attractions in Jakarta and Depok using ResNet50. We divided this study into 2 scenarios. Scenario 1 is a model with 12 classes, and scenario 2 is a model with 16 classes. The results are ResNet50 has been able to handle both research problems, although not yet maximized, with average accuracy in scenario 1 is 92.17% and scenario 2 is 93.75%.
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