Abstract

Electric companies face flow control and inventory obstacles such as reliability, outlays, and time-consuming tasks. Convolutional Neural Networks (CNNs) combined with computational vision approaches can process image classification in warehouse management applications to tackle this problem. This study uses synthetic and real images applied to CNNs to deal with classification of inventory items. The results are compared to seek the neural networks that better suit this application. The methodology consists of fine-tuning several CNNs on Red–Green–Blue (RBG) and Red–Green–Blue-Depth (RGB-D) synthetic and real datasets, using the best architecture of each domain in a blended ensemble approach. The proposed blended ensemble approach was not yet explored in such an application, using RGB and RGB-D data, from synthetic and real domains. The use of a synthetic dataset improved accuracy, precision, recall and f1-score in comparison with models trained only on the real domain. Moreover, the use of a blend of DenseNet and Resnet pipelines for colored and depth images proved to outperform accuracy, precision and f1-score performance indicators over single CNNs, achieving an accuracy measurement of 95.23%. The classification task is a real logistics engineering problem handled by computer vision and artificial intelligence, making full use of RGB and RGB-D images of synthetic and real domains, applied in an approach of blended CNN pipelines.

Highlights

  • Advanced digitization within factories, aggregated with Internet technologies and smart devices, seems to change the fundamental paradigm in industrial production [3]

  • The extensive tests conducted on this paper lead to the results shown

  • The models were pre-trained on Imagenet and fine-tuned on the synthetic datasets

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Summary

Introduction

Advanced digitization within factories, aggregated with Internet technologies and smart devices, seems to change the fundamental paradigm in industrial production [3]. Over the last ten years, Artificial Intelligence played an important role in the supply chain management field, with customer demand predictions, order fulfillment, and picking goods It is reported a lack of study on the warehouse receiving stage [11]. According to an exploratory study, the implementation of warehouse management systems can bring benefits related to increasing inventory accuracy, turnaround time, throughput, workload management, productivity, besides reducing labor cost and paperwork [12]. The identification of products in this company’s warehouse is the flagship of a project to automate flow control and inventory. By this means, it is essential to build an intelligent application that can classify the products.

Problem Description
Image Processing
Image Quality Assessment
Image Adjustment
Synthetic and Real Data
Convolutional Neural Networks
AlexNet
VGGNet
Inception
ResNet
SqueezeNet
DenseNet
EfficientNet
Ensemble Learning Approaches
Methodology
Stage I-Training the CNNs
Stage II-Blending Pipelines
Dataset Description
Results
Discussion and Conclusions
Full Text
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