4 results match your criteria: "Sharnbasva University[Affiliation]"

Addressing Challenges in Skin Cancer Diagnosis: A Convolutional Swin Transformer Approach.

J Imaging Inform Med

October 2024

Department of Computer Science and Engineering, Sharnbasva University, Kalaburagi, Karnataka, India.

Article Synopsis
  • Skin cancer is one of the most dangerous cancer types, and early diagnosis is essential but challenging due to the complexity of lesions and other factors.
  • A novel method called Convolutional Swin Transformer (CSwinformer) is introduced to improve the segmentation and classification of skin lesions through sophisticated data processing and a new modeling framework.
  • The framework, which achieved high accuracy rates, combines multiple techniques and was tested on various benchmark datasets, showing significant efficiency improvements over traditional methods and aiding clinicians in diagnosing skin cancer.
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MobileNet-V2: An Enhanced Skin Disease Classification by Attention and Multi-Scale Features.

J Imaging Inform Med

October 2024

Department of Computer Science and Engineering, Sharnbasva University Kalaburagi, Kalaburagi, Karnataka, India.

The increasing prevalence of skin diseases necessitates accurate and efficient diagnostic tools. This research introduces a novel skin disease classification model leveraging advanced deep learning techniques. The proposed architecture combines the MobileNet-V2 backbone, Squeeze-and-Excitation (SE) blocks, Atrous Spatial Pyramid Pooling (ASPP), and a Channel Attention Mechanism.

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AG-MSTLN-EL: A Multi-source Transfer Learning Approach to Brain Tumor Detection.

J Imaging Inform Med

July 2024

Department of Computer Science & Engineering, Sharnbasva University, Kalaburagi, Karnataka, India.

The analysis of medical images (MI) is an important part of advanced medicine as it helps detect and diagnose various diseases early. Classifying brain tumors through magnetic resonance imaging (MRI) poses a challenge demanding accurate models for effective diagnosis and treatment planning. This paper introduces AG-MSTLN-EL, an attention-aided multi-source transfer learning ensemble learning model leveraging multi-source transfer learning (Visual Geometry Group ResNet and GoogLeNet), attention mechanisms, and ensemble learning to achieve robust and accurate brain tumor classification.

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The cluster technique involves the creation of clusters and the selection of a cluster head (CH), which connects sensor nodes, known as cluster members (CM), to the CH. The CH receives data from the CM and collects data from sensor nodes, removing unnecessary data to conserve energy. It compresses the data and transmits them to base stations through multi-hop to reduce network load.

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