
Research Article
Image Semantic Segmentation for Enhanced Communication
@INPROCEEDINGS{10.1007/978-3-031-81171-5_2, author={A. Vijaya Lakshmi and Raparthi Rohan and Chirag Karthik and A. Aravind Reddy}, title={Image Semantic Segmentation for Enhanced Communication}, proceedings={Broadband Communications, Networks, and Systems. 14th EAI International Conference, BROADNETS 2024, Hyderabad, India, February 16--17, 2024, Proceedings, Part II}, proceedings_a={BROADNETS PART 2}, year={2025}, month={2}, keywords={Augmented Reality Pixel-level Categorization Scene Comprehension Computer Vision semantic segmentation}, doi={10.1007/978-3-031-81171-5_2} }
- A. Vijaya Lakshmi
Raparthi Rohan
Chirag Karthik
A. Aravind Reddy
Year: 2025
Image Semantic Segmentation for Enhanced Communication
BROADNETS PART 2
Springer
DOI: 10.1007/978-3-031-81171-5_2
Abstract
Semantic segmentation, a prominent deep-learning technique in computer vision, involves the assignment of specific labels or categories to each pixel within an image. This advanced approach goes beyond traditional image classification by dividing the image into multiple segments and offering precise labeling for individual pixels. This pixel-level categorization facilitates a comprehensive understanding of the image’s content, thereby enabling precise object localization. Semantic segmentation finds wide-ranging applications across various domains, including autonomous driving, medical imaging, and satellite imagery analysis. It stands as a fundamental component in the quest to enable machines to perceive and interpret visual data in a manner analogous to human perception. The ability to categorize pixels at such a granular level empowers computer vision systems to attain a high level of scene comprehension, enabling them to discern between different objects and their boundaries. This enhanced understanding of the visual world supports sophisticated tasks such as object detection, instance segmentation, and scene parsing.