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Publications

Publications by Tahsir Ahmed Munna

2023

COMPLEXITY SCALABLE LEARNING-BASED IMAGE DECODING

Authors
Munna, TA; Ascenso, A;

Publication
2023 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, ICIP

Abstract
Recently, learning-based image compression has attracted a lot of attention, leading to the development of a new JPEG AI standard based on neural networks. Typically, this type of coding solution has much lower encoding complexity compared to conventional coding standards such as HEVC and VVC (Intra mode) but has much higher decoding complexity. Therefore, to promote the wide adoption of learning-based image compression, especially to resource-constrained (such as mobile) devices, it is important to achieve lower decoding complexity even if at the cost of some coding efficiency. This paper proposes a complexity scalable decoder that can control the decoding complexity by proposing a novel procedure to learn the filters of the convolutional layers at the decoder by varying the number of channels at each layer, effectively having simple to more complex decoding networks. A regularization loss is employed with pruning after training to obtain a set of scalable layers, which may use more or fewer channels depending on the complexity budget. Experimental results show that complexity can be significantly reduced while still allowing a competitive rate-distortion performance.

2018

Simplified Mapreduce Mechanism for Large Scale Data Processing

Authors
Tahsir Ahmed Munna, M; Muhammad Allayear, S; Mohtashim Alam, M; Shah Mohammad Motiur Rahman, S; Samadur Rahman, M; Mesbahuddin Sarker, M;

Publication
International Journal of Engineering & Technology

Abstract
MapReduce has become a popular programming model for processing and running large-scale data sets with a parallel, distributed paradigm on a cluster. Hadoop MapReduce is needed especially for large scale data like big data processing. In this paper, we work to modify the Hadoop MapReduce Algorithm and implement it to reduce processing time.  

2019

NStackSenti: Evaluation of a Multi-level Approach for Detecting the Sentiment of Users

Authors
Sohan, MF; Rahman, SSMM; Munna, MTA; Allayear, SM; Rahman, MH; Rahman, MM;

Publication
Communications in Computer and Information Science - Next Generation Computing Technologies on Computational Intelligence

Abstract

2020

A Sentiment Analysis Based Approach for Understanding the User Satisfaction on Android Application

Authors
Rahman, MM; Rahman, SSMM; Allayear, SM; Patwary, MFK; Munna, MTA;

Publication
Advances in Intelligent Systems and Computing - Data Engineering and Communication Technology

Abstract

2018

Relative Direction: Location Path Providing Method for Allied Intelligent Agent

Authors
Kabir, SR; Alam, MM; Allayear, SM; Munna, MTA; Hossain, SS; Rahman, SSMM;

Publication
Communications in Computer and Information Science - Advances in Computing and Data Sciences

Abstract

2019

Prediction Model for Prevalence of Type-2 Diabetes Mellitus Complications Using Machine Learning Approach

Authors
Younus, M; Munna, MTA; Alam, MM; Allayear, SM; Ara, SJF;

Publication
Studies in Big Data - Data Management and Analysis

Abstract

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