Please use this identifier to cite or link to this item: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/27737
Title: Bag of Tricks for Improving Deep Learning Performance on Multimodal Image Classification
Authors: Adeshina, Steve
Adedigba, Adeyinka
Keywords: bag of tricks
COVID-19
label smoothing
lookahead optimizer
medical images
multi-modality
self-attention
Issue Date: 13-Jul-2022
Publisher: Bioengineering
Citation: Adeshina, S. A., & Adedigba, A. P. (2022). Bag of Tricks for Improving Deep Learning Performance on Multimodal Image Classification. Bioengineering, 9(7), 312.
Abstract: A comprehensive medical image-based diagnosis is usually performed across various image modalities before passing a final decision; hence, designing a deep learning model that can use any medical image modality to diagnose a particular disease is of great interest. The available methods are multi-staged, with many computational bottlenecks in between. This paper presents an improved end-to-end method of multimodal image classification using deep learning models. We present top research methods developed over the years to improve models trained from scratch and transfer learning approaches. We show that when fully trained, a model can first implicitly discriminate the imaging modality and then diagnose the relevant disease. Our developed models were applied to COVID-19 classification from chest X-ray, CT scan, and lung ultrasound image modalities. The model that achieved the highest accuracy correctly maps all input images to their respective modality, then classifies the disease achieving overall 91.07% accuracy
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/27737
ISSN: https://doi.org/10.3390/ bioengineering9070312
Appears in Collections:Mechatronics Engineering

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