Title of article :
A comparative analysis on various block truncation methods in the E-learning environment
Author/Authors :
Sivakumar, R.D Bharathiar University - Coimbatore, India , Ruba Soundar, K Department of CSE - Mepco Schlenk Engineering College - Sivakasi, India
Abstract :
Image compression and Image processing are the two aspects that affect image specific e-learning
environment. In this regard, there are various methods proposed to process and compress the image
effectively. Recent works mainly concentrate on finding the memory complexity and processing
complexity of various techniques. According to that, block truncation models are widely applied
over various e-learning fields. Block Truncation Model (BTM) considers the images as collection of
individual blocks to be processed. These blocks are extracted and evaluated for image compression.
To compress the images, the least important blocks need to be ignored or suppressed. At this stage,
standard BTC, Absolute Moment BTC (AMBTC), Machine Learning (ML) based BTC and Deep
Learning (DL) based BTC techniques are emerged from various resources. This work is analyzing
various BTC models in terms of time efficiency, memory efficiency and computation efficiency. The
results shown in this work reveal the detailed comparisons of e-learning based block truncation
models.
Keywords :
E-learning , BTC , Functions , Comparison , Performance Evaluations
Journal title :
International Journal of Nonlinear Analysis and Applications