Abstract
A cosmetic product recognition system is proposed in this paper. For this recognition system, we have proposed a cosmetic product database that contains image samples of forty different cosmetic items. The purpose of this recognition system is to recognize Cosmetic products with there types, brands and retailers such that to analyze a customer experience what kind of products and brands they need. This system has various applications in such as brand recognition, product recognition and also the availability of the products to the vendors. The implementation of the proposed system is divided into three components: preprocessing, feature extraction and classification. During preprocessing we have scaled and transformed the color images into gray-scaled images to speed up the process. During feature extraction, several different feature representation schemes: transformed, structural and statistical texture analysis approaches have been employed and investigated by employing the global and local feature representation schemes. Various machine learning supervised classification methods such as Logistic Regression, Linear Support Vector Machine, Adaptive k-Nearest Neighbor, Artificial Neural Network and Decision Tree classifiers have been employed to perform the classification tasks. Apart from this, we have also performed some data analytic tasks for Brand Recognition as well as Retailer Recognition and for these experimentation, we have employed some datasets from the ‘Kaggle’ website and have obtained the performance due to the above-mentioned classifiers. Finally, the performance of the cosmetic product recognition system, Brand Recognition and Retailer Recognition have been aggregated for the customer decision process in the form of the state-of-the-art for the proposed system.
Highlights
In real-world applications, E-commerce plays an important role in the field of commercial online transactions to increase the buying and selling of products through the Internet
The configurations of the mobile capturing device are ‘Honor 9 lite’, model-number ‘LLD-AL10’, operating system ‘Android Oreo 8’, processor ‘Octa core Kirin 659’, memory ‘4GB RAM’, primary camera ‘13MP + 2MP’, secondary camera ‘13MP + 2MP’. This database contains image samples of forty different cosmetic products. The images of this database are captured in an unconstrained environment using a mobile camera device under visual wavelength (VW) lighting conditions
A cosmetic product recognition system is proposed in this paper where a database of forty different cosmetic products has been created
Summary
The selected information undergo for evaluating the pre-purchase and post-purchase (https://econsultancy.com/blog/69460-image-recognitionin-ecommerce-visual-search-product-tagging-and-content-curation) decisions. This field of online marketing for product selection based on image recognition has been increased for productivity and marketing in E-commerce. Instance recognition relates to recognizing the 2D or 3D rigid objects with different viewpoints, cluttered background with occlusions conditions These problems are more mature and being used in various commercial applications such as generic class recognition, photosynthesis based applications, etc. The novelty of object recognition task lies on the invariant to viewpoint changes, object transformations, robust to noise and occlusion These are performed by analyzing textures in the image or video frames.
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