At a grocery store, product supply management is critical to its employ-ee's ability to operate productively. To find the right time for updating the item in terms of design/replenishment, real-time data on item availability are required. As a result, the item is consistently accessible on the rack when the client requires it. This study focuses on product display management at a grocery store to determine a particular product and its quantity on the shelves. Deep Learning (DL) is used to determine and identify every item and the store's supervisor compares all identi-fied items with a preconfigured item planning that was done by him earlier. The approach is made in II-phases. Product detection, followed by product recogni-tion. For product detection, we have used You Only Look Once Version 5 (YOLOV5), and for product recognition, we have used both the shape and size features along with the color feature to reduce the false product detection. Experi-mental results were carried out using the SKU-110 K data set. The analyses show that the proposed approach has improved accuracy, precision, and recall. For product recognition, the inclusion of color feature enables the reduction of error date. It is helpful to distinguish between identical logo which has different colors. We can achieve the accuracy percentage for feature level as 75 and score level as 81.
CITATION STYLE
Gothai, E., Bhatia, S., Alabdali, A. M., Sharma, D. K., Kondamudi, B. R., & Dadheech, P. (2022). Design Features of Grocery Product Recognition Using Deep Learning. Intelligent Automation and Soft Computing, 34(2), 1231–1246. https://doi.org/10.32604/iasc.2022.026264
Mendeley helps you to discover research relevant for your work.