You are in:Home/Publications/Handwritten chemical formulas classification model using deep transfer convolutional neural networks

Dr. Ahmed Hagag :: Publications:

Title:
Handwritten chemical formulas classification model using deep transfer convolutional neural networks
Authors: Ahmed Hagag, Ibrahim Omara, Ahmed NK Alfarra, Fahd Mekawy
Year: 2021
Keywords: Not Available
Journal: 2021 International Conference on Electronic Engineering (ICEEM)
Volume: Not Available
Issue: Not Available
Pages: 1-6
Publisher: IEEE
Local/International: International
Paper Link:
Full paper Not Available
Supplementary materials Not Available
Abstract:

With the spread of the COVID19 pandemic, blended learning has become one of the most used methods in educational organizations such as universities, community colleges, and schools. In blended learning, the students' practical activities are done in more than one way, including simulation software and the place of study. For chemical experiment programs, the classification of handwritten chemical formulas plays an important role in determining the simulation software's efficiency. Accordingly, in this study, we propose a model for handwritten chemical formula classification. First, this paper describes a handwritten chemical formulas dataset that contains eight classes (HCFD8). Second, convolutional neural networks (CNNs) with pre-trained weights are used as a deep feature extractor to extract features from the images. Third, due to limited training images per class, the proposed model uses data augmentation techniques to expand the training images. Then, an enhanced multilayer perceptron (EMLP) strategy is used to classify the image. Finally, we provide a performance analysis of typical deep learning approaches on HCFD8, which shows that the proposed model performs good accuracy results.

Google ScholarAcdemia.eduResearch GateLinkedinFacebookTwitterGoogle PlusYoutubeWordpressInstagramMendeleyZoteroEvernoteORCIDScopus