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Classification of Beer Bottles using Object Detection and Transfer Learning

Authors :
Hohlfeld, Philipp
Ostermeier, Tobias
Brandl, Dominik
Publication Year :
2022

Abstract

Classification problems are common in Computer Vision. Despite this, there is no dedicated work for the classification of beer bottles. As part of the challenge of the master course Deep Learning, a dataset of 5207 beer bottle images and brand labels was created. An image contains exactly one beer bottle. In this paper we present a deep learning model which classifies pictures of beer bottles in a two step approach. As the first step, a Faster-R-CNN detects image sections relevant for classification independently of the brand. In the second step, the relevant image sections are classified by a ResNet-18. The image section with the highest confidence is returned as class label. We propose a model, with which we surpass the classic one step transfer learning approach and reached an accuracy of 99.86% during the challenge on the final test dataset. We were able to achieve 100% accuracy after the challenge ended

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2201.03791
Document Type :
Working Paper