IoT based Framework for Smart Healthcare.
Abstract:
Deep Learning-based Smart Healthcare is getting so much attention due to real-time applicability in everyone life's, and It has obtained more attention with the convergen...Show MoreMetadata
Abstract:
Deep Learning-based Smart Healthcare is getting so much attention due to real-time applicability in everyone life's, and It has obtained more attention with the convergence of IoT. Diabetic eye disease is the primary cause of blindness between working aged peoples. The major populated Asian countries such as India and China presently account for millions of people and at the verge of an eruption of diabetic inhabitants. These growing number of diabetic patients posed a major challenge among trained doctors to provide medical screening and diagnosis. Our goal is to leverage the deep learning techniques to automate the detection of blind spot in an eye and identify how severe the stage may be. In this paper, we propose an optimized technique on top of recently released pre-trained EfficientNet models for blindness identification in retinal images along with a comparative analysis among various other neural network models. Our fine-tuned EfficientNet-B5 based model evaluation follows the benchmark dataset of retina images captured using fundus photography during varied imaging stages and outperforms CNN and ResNet50 models.
IoT based Framework for Smart Healthcare.
Published in: IEEE Access ( Volume: 9)
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Cites in Papers - |
Cites in Papers - IEEE (8)
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1.
Divya K. S, Manesh T, Abhinand K Prasad, Akhila Venu, Akshara Devaraj, Albert Mathew Paul, "Artificial Intelligence for Retina Disease Detection: A Comprehensive Survey", 2024 International Conference on IoT Based Control Networks and Intelligent Systems (ICICNIS), pp.1310-1316, 2024.
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Kalpana Murugan, Tarun Srinivasulu Gondrala, Arani Hariprasad Vigneesh, Ushasree Nandimandalam, "IoT Based Diabetic Retinopathy Monitoring System", 2022 IEEE International Conference of Electron Devices Society Kolkata Chapter (EDKCON), pp.47-50, 2022.
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Aashat Gehlot, Neeti Misra, "Retracted: An IoT Based Smart Healthcare Medical System using Deep Learning Algorithm", 2022 IEEE 2nd Mysore Sub Section International Conference (MysuruCon), pp.1-6, 2022.
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