Numerical Simulation and Design of Semantic Segmentation Using Improved Resnet-50 Based Deep Learning Techniques

Authors

  • Akash Saxena Professor, Compucom Institute of Information Technology and Management Jaipur Rajasthan India
  • Khushboo Saxena Assistant Professor, Department of Computer Science, ABESIT Ghaziabad, India
  • Lovkesh Singh Vermani Lecturer, PPS Society, Nabha-Punjab, India
  • Vivek Sharma Assistant Professor, Computer & Communication Engineering, Manipal University Jaipur, India
  • Seema Kaloria Assistant Professor, Computer Science & Engineering, ACEIT, Jaipur, India

Keywords:

Segmentation, CNN, Resnet-50, Machine Learning, Deep Learning

Abstract

This paper presents a comprehensive study on numerical simulation and analysis of deep learning-based semantic segmentation for complex background images using an improved Resnet 50 network. The objective of this research is to enhance the accuracy and computational efficiency of semantic segmentation models, particularly in challenging scenarios with complex backgrounds. The proposed methodology incorporates several modifications to the Resnet 50 architecture, including skip connections, residual attention modules, and spatial pyramid pooling, to improve its ability to capture fine-grained details, focus on salient regions, and incorporate multi-scale contextual information. The study begins with an overview of the motivation and significance of deep learning-based semantic segmentation in computer vision applications. The limitations of existing approaches are highlighted, specifically in handling complex background images, which serve as the rationale for the proposed methodology. A review of related works in the field is presented to provide an understanding of the state-of-the-art techniques and the research gaps that the proposed methodology aims to address. The methodology section provides a detailed description of the proposed approach. The improved Resnet 50 network architecture is presented, along with the modifications made to incorporate skip connections, residual attention modules, and spatial pyramid pooling. The network is trained using a large-scale dataset of complex background images, and the training process is explained, including data preprocessing, augmentation techniques, and the optimization algorithm used. This paper presents a comprehensive numerical simulation and analysis of deep learning-based semantic segmentation for complex background images using an improved Resnet 50 network. Semantic segmentation plays a crucial role in computer vision tasks, enabling accurate object recognition and scene understanding. However, complex background images pose significant challenges due to the presence of multiple objects, occlusions, and variations in lighting conditions. To address these challenges, we propose an enhanced Resnet 50 network architecture and evaluate its performance through extensive simulations.

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Improved 3d U-Resnet Architecture

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Published

17.05.2023

How to Cite

Saxena, A. ., Saxena, K. ., Vermani, L. S. ., Sharma, V. ., & Kaloria, S. . (2023). Numerical Simulation and Design of Semantic Segmentation Using Improved Resnet-50 Based Deep Learning Techniques. International Journal of Intelligent Systems and Applications in Engineering, 11(6s), 804–815. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2915

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Research Article