Open Access
Subscription Access
Open Access
Subscription Access
A Deep Learning Technique for Efficient Multimedia for Data Compression
Subscribe/Renew Journal
Medical image compression plays a pivotal role in efficient data storage and transmission, crucial for modern healthcare systems. This research proposes a convolutional transfer learning technique scheme tailored for multimedia data compression, specifically targeting medical images. In the background, the growing volume of medical imaging data and the demand for efficient storage and transmission underscore the need for innovative compression methods. Leveraging transfer learning from pre-trained convolutional neural networks (CNNs) designed for image recognition tasks, our methodology optimizes the compression process for medical images. The proposed scheme utilizes a pre-trained CNN’s feature extraction capabilities to capture relevant patterns in medical images, followed by fine-tuning on a specialized dataset. This approach capitalizes on the inherent ability of CNNs to learn hierarchical representations, enhancing the compression model’s adaptability to medical imaging nuances. The contribution of this research lies in the development of a tailored transfer learning scheme that effectively balances generic feature extraction and domain-specific adaptation for medical images. Results demonstrate significant improvements in compression efficiency, preserving diagnostic information while achieving substantial data reduction. The proposed scheme showcases promise for enhancing medical image storage, transmission, and retrieval systems, contributing to the advancement of healthcare technology.
Keywords
Transfer Learning, Convolutional Neural Networks, Medical Image Compression, Multimedia, Data Efficiency.
Subscription
Login to verify subscription
User
Font Size
Information
- Youngeun An, Sungbum Pan and Jongan Park, “Image Retrieval Based on Color Tone Variance Difference Feature”, Proceedings on International Conference on Machine Learning and Cybernetics, Vol. 7, pp. 3777-3780, 2008.
- Yuebin Wang, Liqiang Zhang, Xiaohua Tong, Liang Zhang, Zhenxin Zhang, Hao Liu, Xiaoyue Xing and P. Takis Mathiopoulos, “A Three-Layered Graph-Based Learning Approach for Remote Sensing Image Retrieval”, IEEE Transactions on Geoscience and Remote Sensing, Vol. 54, No. 10, pp. 6020-6034, 2016.
- S. Huang and M. Sun, “Deep Reinforcement Learning for Multimedia Analysis: A Survey”, ACM Transactions on Multimedia Computing, Communications, and Applications, Vol. 16, No. 3, pp. 1-29, 2020.
- David Money Harris, and Sarah L. Harris, “Digital Design and Computer Architecture”, Morgan Kaufmann, 2007.
- P. Narwal and K.K. Bhatia, “A Comprehensive Survey and Mathematical Insights Towards Video Summarization”, Journal of Visual Communication and Image Representation, Vol. 89, pp. 1-11, 2022.
- P.Y. Ingle and Y.G. Kim, “Multiview Abnormal Video Synopsis in Real-Time”, Engineering Applications of Artificial Intelligence, Vol. 123, pp. 1-14, 2023.
- S. Selvi and V. Saravanan, “Mapping and Classification of Soil Properties from Text Dataset using Recurrent Convolutional Neural Network”, ICTACT Journal on Soft Computing, Vol. 11, No. 4, pp. 2438-2443, 2021.
- A.A. Khan, W. Ali and S. Tumrani, “Content-Aware Summarization of Broadcast Sports Videos: An AudioVisual Feature Extraction Approach”, Neural Processing Letters, Vol. 52, pp. 1945-1968, 2020.
- L. Nixon and V. Mezaris, “Data-Driven Personalisation of Television Content: A Survey”, Multimedia Systems, Vol. 28, No. 6, pp. 2193-2225, 2022.
- A. Sabha and A. Selwal, “Data-Driven Enabled Approaches for Criteria-Based Video Summarization: A Comprehensive Survey, Taxonomy, and Future Directions”, Multimedia Tools and Applications, Vol. 78, pp. 61-75, 2023.
Abstract Views: 116
PDF Views: 0