Archive Details

Year 2024
Volume/Issue/Review Month Volume 1 | Special Issue | October
Title Navigating the landscape of Large Language Models: Insights into AI Algorithm Bias, Data Security and Advancements
Authors Adnan Yousuff, Maroof Abdullah, Anas Isham Ahmed, Abhishek M, Madhumita Mishra
Broad area Navigating the landscape of Large Language Models: Insights into AI Algorithm Bias, Data Security and Advancements
Abstract Remote sensing technology is indispensable for comprehending and monitoring the Earth’s surface through the acquisition of data from satellite imagery. This literature review delves into the realm of satellite image processing across various study objectives, employing diverse learning paradigms. The scope of study encompasses a broad array of applications, including land cover classification, change detection, object detection, segmentation, image fusion, and retrieval systems. The methodologies explored in extracting meaningful insights from satellite data span supervised, unsupervised, semi-supervised, and self-supervised learning techniques. Supervised learning entails training models with labeled data to categorize and identify specific features, while unsupervised learning facilitates pattern and structure extraction from unlabeled data. Bridging the gap between supervised and unsupervised methods, semi-supervised learning amalgamates labeled and unlabeled data. In contrast, self-supervised learning exploits inherent data properties for representation learning without manual labeling. By scrutinizing the application of these learning paradigms across various study objectives in remote sensing, this literature review offers valuable insights into the progress and challenges in satellite image processing for comprehending Earth’s surface dynamics.
File
Referenceses