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http://dx.doi.org/10.17703/IJACT.2019.7.4.321

Cody Recommendation System Using Deep Learning and User Preferences  

Kwak, Naejoung (Chungbuk National Univ. Dept. Information & Communication)
Kim, Doyun (megaNEXT Co.Ltd)
kim, Minho (megaNEXT Co.Ltd)
kim, Jongseo (megaNEXT Co.Ltd)
Myung, Sangha (megaNEXT Co.Ltd)
Yoon, Youngbin (megaNEXT Co.Ltd)
Choi, Jihye (megaNEXT Co.Ltd)
Publication Information
International Journal of Advanced Culture Technology / v.7, no.4, 2019 , pp. 321-326 More about this Journal
Abstract
As AI technology is recently introduced into various fields, it is being applied to the fashion field. This paper proposes a system for recommending cody clothes suitable for a user's selected clothes. The proposed system consists of user app, cody recommendation module, and server interworking of each module and managing database data. Cody recommendation system classifies clothing images into 80 categories composed of feature combinations, selects multiple representative reference images for each category, and selects 3 full body cordy images for each representative reference image. Cody images of the representative reference image were determined by analyzing the user's preference using Google survey app. The proposed algorithm classifies categories the clothing image selected by the user into a category, recognizes the most similar image among the classification category reference images, and transmits the linked cody images to the user's app. The proposed system uses the ResNet-50 model to categorize the input image and measures similarity using ORB and HOG features to select a reference image in the category. We test the proposed algorithm in the Android app, and the result shows that the recommended system runs well.
Keywords
deep-learning; Fashion; Cody Recommendation; User Preferences;
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