Bag of Tricks for Retail Product Image Classification

Retail Product Image Classification is an important Computer Vision and Machine Learning problem for building real world systems like self-checkout stores and automated retail execution evaluation. In this work, we present various tricks to increase accuracy of Deep Learning models on different types of retail product image classification datasets. These tricks enable us to increase the accuracy of fine tuned convnets for retail product image classification by a large margin. As the most prominent trick, we introduce a new neural network layer called Local-Concepts-Accumulation (LCA) layer which gives consistent gains across multiple datasets. Two other tricks we find to increase accuracy on retail product identification are using an instagram-pretrained Convnet and using Maximum Entropy as an auxiliary loss for classification.

READ FULL TEXT

page 2

page 4

research
10/07/2021

Using Contrastive Learning and Pseudolabels to learn representations for Retail Product Image Classification

Retail product Image classification problems are often few shot classifi...
research
07/17/2020

A Technical Report for VIPriors Image Classification Challenge

Image classification has always been a hot and challenging task. This pa...
research
07/27/2022

Multi-layer Representation Learning for Robust OOD Image Classification

Convolutional Neural Networks have become the norm in image classificati...
research
09/09/2016

An empirical study on the effects of different types of noise in image classification tasks

Image classification is one of the main research problems in computer vi...
research
06/15/2022

Efficient Adaptive Ensembling for Image Classification

In recent times, except for sporadic cases, the trend in Computer Vision...
research
04/18/2019

ProductNet: a Collection of High-Quality Datasets for Product Representation Learning

ProductNet is a collection of high-quality product datasets for better p...

Please sign up or login with your details

Forgot password? Click here to reset