Deep Learning-Based Business Recommendation System in Intelligent Vehicles

被引:0
作者
Yu K. [1 ]
Lim K. [2 ]
Kim P. [1 ]
机构
[1] Department of Computer Engineering, Chosun University, Gwangju
[2] Department of Computer Science, William Paterson University of New Jersey, Wayne, 07470, NJ
关键词
Deep learning - Image classification - Intelligent vehicle highway systems - Learning systems;
D O I
10.1155/2023/3704217
中图分类号
学科分类号
摘要
The advancements in intelligent vehicle technologies are facilitating the growth of information technology (IT) platforms, unlike conventional automobiles. In-vehicle-infotainment (IVI) is becoming an appealing element in intelligent vehicles as it offers various experiences to users; however, it requires personalized services to provide even more sophisticated user experiences. It is supposed that passengers search for businesses that provide products or services they found interesting in videos played via IVIs while the vehicle is driving autonomously. In that case, it could be more effective to use images that can express the user's preference as a query for the search than to utilize texts such as product names. Accordingly, this study proposes a recommendation system that informs users of businesses near an intelligent vehicle when a passenger inputs an image of a product or service into an IVI system. The proposed recommendation system involves training deep learning-based image classification models with the user's interest images to classify the category, measure the similarity with the business category using Word2vec, and finally provide the locations of the businesses with a high degree of similarity via IVI, using a smartphone. The experimental results indicated that the user's interest image exhibited 85% accuracy for category classification via the EfficientNet B0 model, while the similarity between the image and business categories using Word2vec was particularly high in the business category similar to the actual image category. © 2023 Kyungho Yu et al.
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