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N. Arunkumar

Researcher at Shanmugha Arts, Science, Technology & Research Academy

Publications -  61
Citations -  4785

N. Arunkumar is an academic researcher from Shanmugha Arts, Science, Technology & Research Academy. The author has contributed to research in topics: Feature (computer vision) & Support vector machine. The author has an hindex of 32, co-authored 57 publications receiving 3279 citations.

Papers
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Secure Medical Data Transmission Model for IoT-Based Healthcare Systems

TL;DR: The proposed hybrid security model for securing the diagnostic text data in medical images proved its ability to hide the confidential patient’s data into a transmitted cover image with high imperceptibility, capacity, and minimal deterioration in the received stego-image.
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Enabling technologies for fog computing in healthcare IoT systems

TL;DR: A systematic literature review of the technologies for fog computing in the healthcare IoT systems field and analyzing the previous is presented, providing motivation, limitations faced by researchers, and suggestions proposed to analysts for improving this essential research field.
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A deep learning approach for Parkinson’s disease diagnosis from EEG signals

TL;DR: An automated detection system for Parkinson’s disease employing the convolutional neural network (CNN) employing the thirteen-layer CNN architecture which can overcome the need for the conventional feature representation stages is proposed.
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Optimal deep learning model for classification of lung cancer on CT images

TL;DR: An innovative automated diagnosis classification method for Computed Tomography images of lungs with the assistance of Optimal Deep Neural Network (ODNN) and Linear Discriminate Analysis (LDA) is presented.
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Hybrid optimization with cryptography encryption for medical image security in Internet of Things

TL;DR: This paper investigated the security of medical images in IoT by utilizing an innovative cryptographic model with optimization strategies, and identified a diverse encryption algorithm with its optimization methods with the most extreme peak signal-to-noise ratio values.