Search Results for author: Mizanur Rahman

Found 25 papers, 3 papers with code

FakeWatch: A Framework for Detecting Fake News to Ensure Credible Elections

no code implementations14 Mar 2024 Shaina Raza, Tahniat Khan, Drai Paulen-Patterson, Veronica Chatrath, Mizanur Rahman, Oluwanifemi Bamgbose

In today's technologically driven world, the rapid spread of fake news, particularly during critical events like elections, poses a growing threat to the integrity of information.

Computational Efficiency Misinformation +1

Analyzing the Impact of Fake News on the Anticipated Outcome of the 2024 Election Ahead of Time

no code implementations1 Dec 2023 Shaina Raza, Mizanur Rahman, Shardul Ghuge

Despite increasing awareness and research around fake news, there is still a significant need for datasets that specifically target racial slurs and biases within North American political speeches.

Benchmarking Language Modelling +1

FakeWatch ElectionShield: A Benchmarking Framework to Detect Fake News for Credible US Elections

no code implementations27 Nov 2023 Tahniat Khan, Mizanur Rahman, Veronica Chatrath, Oluwanifemi Bamgbose, Shaina Raza

We have created a novel dataset of North American election-related news articles through a blend of advanced language models (LMs) and thorough human verification, for precision and relevance.

Benchmarking Computational Efficiency +1

CQSumDP: A ChatGPT-Annotated Resource for Query-Focused Abstractive Summarization Based on Debatepedia

no code implementations31 Mar 2023 Md Tahmid Rahman Laskar, Mizanur Rahman, Israt Jahan, Enamul Hoque, Jimmy Huang

Debatepedia is a publicly available dataset consisting of arguments and counter-arguments on controversial topics that has been widely used for the single-document query-focused abstractive summarization task in recent years.

Abstractive Text Summarization Text Generation

Reinforcement Learning based Cyberattack Model for Adaptive Traffic Signal Controller in Connected Transportation Systems

no code implementations31 Oct 2022 Muhammad Sami Irfan, Mizanur Rahman, Travis Atkison, Sagar Dasgupta, Alexander Hainen

Specifically, an RL agent is trained to learn an optimal rate of sybil vehicle injection to create congestion for an approach(s).

Improving the Environmental Perception of Autonomous Vehicles using Deep Learning-based Audio Classification

no code implementations9 Sep 2022 Finley Walden, Sagar Dasgupta, Mizanur Rahman, Mhafuzul Islam

Although visual sensors of an AV, such as camera, lidar, and radar, help to see its surrounding environment, an AV cannot see beyond those sensors line of sight.

Audio Classification Autonomous Vehicles

Audio Analytics-based Human Trafficking Detection Framework for Autonomous Vehicles

no code implementations9 Sep 2022 Sagar Dasgupta, Kazi Shakib, Mizanur Rahman, Silvana V Croope, Steven Jones

The objective of this study is to develop an innovative audio analytics-based human trafficking detection framework for autonomous vehicles.

Audio Classification Autonomous Vehicles

Theoretical Development and Numerical Validation of an Asymmetric Linear Bilateral Control Model- Case Study for an Automated Truck Platoon

no code implementations29 Dec 2021 M Sabbir Salek, Mashrur Chowdhury, Mizanur Rahman, Kakan Dey, Md Rafiul Islam

The novelty of the asymmetric LBCM is that using this model all the follower vehicles in a platoon can adjust their acceleration and deceleration to closely follow a constant desired time gap to improve platoon operational efficiency while maintaining local and string stability.

An Innovative Attack Modelling and Attack Detection Approach for a Waiting Time-based Adaptive Traffic Signal Controller

no code implementations19 Aug 2021 Sagar Dasgupta, Courtland Hollis, Mizanur Rahman, Travis Atkison

Thus, the objectives of this paper are to: (i) develop a "slow poisoning" attack generation strategy for an ATSC, and (ii) develop a prediction-based "slow poisoning" attack detection strategy using a recurrent neural network -- i. e., long short-term memory model.

A Sensor Fusion-based GNSS Spoofing Attack Detection Framework for Autonomous Vehicles

no code implementations19 Aug 2021 Sagar Dasgupta, Mizanur Rahman, Mhafuzul Islam, Mashrur Chowdhury

Data from multiple low-cost in-vehicle sensors (i. e., accelerometer, steering angle sensor, speed sensor, and GNSS) are fused and fed into a recurrent neural network model, which is a long short-term memory (LSTM) network for predicting the location shift, i. e., the distance that an AV travels between two consecutive timestamps.

Autonomous Vehicles Dynamic Time Warping +1

Sensor Fusion-based GNSS Spoofing Attack Detection Framework for Autonomous Vehicles

no code implementations5 Jun 2021 Sagar Dasgupta, Mizanur Rahman, Mhafuzul Islam, Mashrur Chowdhury

In this study, a sensor fusion based GNSS spoofing attack detection framework is presented that consists of three concurrent strategies for an autonomous vehicle (AV): (i) prediction of location shift, (ii) detection of turns (left or right), and (iii) recognition of motion state (including standstill state).

Autonomous Vehicles Dynamic Time Warping +1

Prediction-Based GNSS Spoofing Attack Detection for Autonomous Vehicles

no code implementations16 Oct 2020 Sagar Dasgupta, Mizanur Rahman, Mhafuzul Islam, Mashrur Chowdhury

A spoofed attack is difficult to detect as a spoofer (attacker who performs spoofing attack) can mimic the GNSS signal and transmit inaccurate location coordinates to an AV.

Autonomous Vehicles

Change Point Models for Real-time Cyber Attack Detection in Connected Vehicle Environment

no code implementations5 Mar 2020 Gurcan Comert, Mizanur Rahman, Mhafuzul Islam, Mashrur Chowdhury

Connected vehicle (CV) systems are cognizant of potential cyber attacks because of increasing connectivity between its different components such as vehicles, roadside infrastructure, and traffic management centers.

Cyber Attack Detection Management

Dynamic Error-bounded Lossy Compression (EBLC) to Reduce the Bandwidth Requirement for Real-time Vision-based Pedestrian Safety Applications

no code implementations29 Jan 2020 Mizanur Rahman, Mhafuzul Islam, Jon C. Calhoun, Mashrur Chowdhury

The objective of this study is to develop a real-time error-bounded lossy compression (EBLC) strategy to dynamically change the video compression level depending on different environmental conditions in order to maintain a high pedestrian detection accuracy.

Pedestrian Detection Video Compression

Grey Models for Short-Term Queue Length Predictions for Adaptive Traffic Signal Control

no code implementations29 Dec 2019 Gurcan Comert, Zadid Khan, Mizanur Rahman, Mashrur Chowdhury

Thus, the objective of this study is to develop queue length prediction models for signalized intersections that can be leveraged by ASCS using four variations of Grey systems: (i) the first order single variable Grey model (GM(1, 1)); (ii) GM(1, 1) with Fourier error corrections; (iii) the Grey Verhulst model (GVM), and (iv) GVM with Fourier error corrections.

Time Series Time Series Analysis

Vision-based Pedestrian Alert Safety System (PASS) for Signalized Intersections

no code implementations2 Jul 2019 Mhafuzul Islam, Mizanur Rahman, Mashrur Chowdhury, Gurcan Comert, Eshaa Deepak Sood, Amy Apon

The contribution of this paper lies in the development of a system using a vision-based deep learning model that is able to generate personal safety messages (PSMs) in real-time (every 100 milliseconds).

Long Short-Term Memory Neural Networks for False Information Attack Detection in Software-Defined In-Vehicle Network

no code implementations24 Jun 2019 Zadid Khan, Mashrur Chowdhury, Mhafuzul Islam, Chin-Ya Huang, Mizanur Rahman

This attack detection model can detect false information with an accuracy, precision and recall of 95%, 95% and 87%, respectively, while satisfying the real-time communication and computational requirements.

Anomaly Detection Time Series +2

Connected Vehicle Application Development Platform (CVDeP) for Edge-centric Cyber-Physical Systems

1 code implementation2 Dec 2018 Mhafuzul Islam, Mizanur Rahman, Sakib Mahmud Khan, Mashrur Chowdhury, Lipika Deka

Connected vehicle (CV) application developers need a development platform to build, test and debug CV applications, such as safety, mobility, and environmental applications, in an edge-centric Cyber-Physical Systems.

Networking and Internet Architecture

Change Point Models for Real-time V2I Cyber Attack Detection in a Connected Vehicle Environment

no code implementations30 Nov 2018 Gurcan Comert, Mizanur Rahman, Mhafuzul Islam, Mashrur Chowdhury

Connected vehicle (CV) systems are cognizant of potential cyber attacks because of increasing connectivity between its different components such as vehicles, roadside infrastructure and traffic management centers.

Cryptography and Security

Real time Traffic Flow Parameters Prediction with Basic Safety Messages at Low Penetration of Connected Vehicles

no code implementations8 Nov 2018 Mizanur Rahman, Mashrur Chowdhury, Jerome McClendon

This estimated traffic flow parameters from low penetration of connected vehicles become noisy compared to 100 percent penetration of CVs, and such noise reduces the real time prediction accuracy of a machine learning model, such as the accuracy of long short term memory (LSTM) model in terms of predicting traffic flow parameters.

Real-time Pedestrian Detection Approach with an Efficient Data Communication Bandwidth Strategy

no code implementations27 Aug 2018 Mizanur Rahman, Mhafuzul Islam, Jon Calhoun, Mashrur Chowdhury

We utilize a lossy compression technique on traffic camera data to determine the tradeoff between the reduction of the communication bandwidth requirements and a defined object detection accuracy.

Edge-computing object-detection +2

A Longitudinal Study of Google Play

1 code implementation8 Feb 2018 Rahul Potharaju, Mizanur Rahman, Bogdan Carbunar

Our results show that a high number of these apps have not been updated over the monitoring interval.

Social and Information Networks Computers and Society

Cannot find the paper you are looking for? You can Submit a new open access paper.