Search Paper
  • Home
  • Login
  • Categories
  • Post URL
  • Academic Resources
  • Contact Us

 

Deep learning pipeline for image classification on mobile phones

google+
Views: 107                 

Author :  Muhammad Muneeb, Samuel F. Feng, and Andreas Henschel

Affiliation :  Khalifa University of Science and Technology, Abu Dhabi, United Arab Emirates.

Country :  United Arab Emirates

Category :  Computer Science & Information Technology

Volume, Issue, Month, Year :  12, 9, May, 2022

Abstract :


This article proposes and documents a machine-learning framework and tutorial for classifying images using mobile phones. Compared to computers, the performance of deep learning model performance degrades when deployed on a mobile phone and requires a systematic approach to find a model that performs optimally on both computers and mobile phones. By following the proposed pipeline, which consists of various computational tools, simple procedural recipes, and technical considerations, one can bring the power of deep learning medical image classification to mobile devices, potentially unlocking new domains of applications. The pipeline is demonstrated on four different publicly available datasets: COVID X-rays, COVID CT scans, leaves, and colorectal cancer. We used two application development frameworks: TensorFlow Lite (real-time testing) and Flutter (digital image testing) to test the proposed pipeline. We found that transferring deep learning models to a mobile phone is limited by hardware and classification accuracy drops. To address this issue, we proposed this pipeline to find an optimized model for mobile phones. Finally, we discuss additional applications and computational concerns related to deploying deep-learning models on phones, including real-time analysis and image preprocessing. We believe the associated documentation and code can help physicians and medical experts develop medical image classification applications for distribution.

Keyword :  Image classification, machine learning, medical image classification, mobile phone application, cancer

Journal/ Proceedings Name :  9th International Conference on Artificial Intelligence and Applications (AIAPP 2022)

URL :  https://aircconline.com/csit/papers/vol12/csit120901.pdf

User Name : muneeb007
Posted 01-06-2022 on 05:09:51 AEDT



Related Research Work

  • Understanding The Worldwide Paths Towards The Creation Of True Intelligence For Machines
  • An Advantageous And User-friendly Mobile Program To Benefit Students In Seeking Their Suitable Colleges Through The Use Of Web Scraping, Machine Learning, And Frontend Design
  • An Overview Of Copy Move Forgery Detection Approaches
  • Scaled Quantization For The Vision Transformer

About Us | Post Cfp | Share URL Main | Share URL category | Post URL
All Rights Reserved @ Call for Papers - Conference & Journals