Non-Linear Adaptive Temporal Compression of Satellite Images

Abstract

Frequently collected multitemporal multispectral images mostly present strong temporal redundancies that can be exploited for data compression in temporal domain considering the fact that the user already has a previous reference image. While the spatial and spectral prediction model is applied, the compression considering temporal correlation needs to be explored. In this paper a gradient-based temporal prediction approach has been proposed where the image of a scene is predicted from the previously taken image of the same scene. The geometrically co-registered reference image and the recent image are used for sequential prediction in order to minimize the model residual. The model parameters are optimized automatically to achieve minimum residual entropy for lossless compression. Experimental results demonstrate the effectiveness of proposed method, especially when the new data are not highly correlated to the previous data due to the real changes experienced between the two data collection dates

Authors and Affiliations

Boshir Ahmed, Md. Al Mamun, Md. Motuza Ali

Keywords

Related Articles

Mobile Based Event Driven Management System

With the changing communication services, it’s all on the user to choose what way of communication is suitable to communicate with different set of devices. For this an up-to date user presence is required for an essenti...

Combinations, Contradictions, And Cross Fertilization in Actor-Network Theory and Assemblage Thinking

This paper shows that assembling thought as well as actor-network theory (ANT) have such a great deal in common than the debate suggests. It proposes three cross-fertilizations depending on intersections as well as disju...

A Comprehensive Review of YOLOv5: Advances in Real-Time Object Detection

YOLOv5 represents a significant advancement in the field of real-time object detection, building upon the YOLO (You Only Look Once) series' legacy. This paper provides a comprehensive review of YOLOv5, examining its arch...

A Literature Review on Big Data Analytics

Huge volumes of data have been available to policymakers in the digital world. Big data is a term to collections that are not always huge, but also varied and fast changing, rendering standard tools and procedures inadeq...

Satiating A User-Delineated Time Constraints While Scheduling Workflow in Cloud Environments

Cloud computing is used to achieve sustainability in terms of computing. It reduces energy and resource consumption. Most of the companies have been moving their applications to the cloud to reduce power, energy re-so...

Download PDF file
  • EP ID EP749177
  • DOI -
  • Views 52
  • Downloads 0

How To Cite

Boshir Ahmed, Md. Al Mamun, Md. Motuza Ali (2014). Non-Linear Adaptive Temporal Compression of Satellite Images. International Journal of Innovative Research in Computer Science and Technology, 2(4), -. https://www.europub.co.uk/articles/-A-749177