RSwinV2-MD: An Enhanced Residual SwinV2 Transformer for Monkeypox Detection from Skin Images
Rashid Iqbal, Saddam Hussain Khan (Artificial Intelligence Lab, Department of Computer Systems Engineering, University of Engineering, Applied Sciences (UEAS), Swat, Pakistan)

TL;DR
This paper introduces RSwinV2, an advanced transformer-based model with residual and convolutional features, significantly improving monkeypox lesion classification accuracy from skin images.
Contribution
The paper presents RSwinV2, a novel hierarchical transformer model with residual blocks and patch embeddings, enhancing lesion classification for monkeypox detection.
Findings
Achieved 96.51% accuracy on Kaggle dataset
Outperformed standard CNN and SwinTransformer models
Validated as effective for computer-assisted Mpox diagnosis
Abstract
In this paper, a deep learning approach for Mpox diagnosis named Customized Residual SwinTransformerV2 (RSwinV2) has been proposed, trying to enhance the capability of lesion classification by employing the RSwinV2 tool-assisted vision approach. In the RSwinV2 method, a hierarchical structure of the transformer has been customized based on the input dimensionality, embedding structure, and output targeted by the method. In this RSwinV2 approach, the input image has been split into non-overlapping patches and processed using shifted windows and attention in these patches. This process has helped the method link all the windows efficiently by avoiding the locality issues of non-overlapping regions in attention, while being computationally efficient. RSwinV2 has further developed based on SwinTransformer and has included patch and position embeddings to take advantage of the transformer…
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Taxonomy
TopicsPoxvirus research and outbreaks · COVID-19 diagnosis using AI · Cutaneous Melanoma Detection and Management
