Md. Saif Hassan Onim

Md. Saif Hassan Onim
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Md. Saif verified their affiliation via an institutional email.
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Md. Saif verified their affiliation via an institutional email.
  • Master of Science
  • PhD Student at University of Tennessee at Knoxville

Learning

About

31
Publications
4,568
Reads
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167
Citations
Introduction
Md. Saif Hassan Onim is pursuing his Ph.D. in Computer Engineering at the University of Tennessee, Knoxville. He is also serving as a GRA and GTA. Before that He worked as a Lecturer in the Department of Electrical, Electrical, and Communication Engineering at the Military Institute of Science and Technology, Bangladesh. He is currently working on the application of machine learning and quantum machine learning in health care, robotics, and image segmentation.
Current institution
University of Tennessee at Knoxville
Current position
  • PhD Student
Additional affiliations
January 2020 - August 2022
Military Institute of Science and Technology
Position
  • Lecturer
Education
August 2022 - May 2027
University of Tennessee at Knoxville
Field of study
  • Computer Engineering
February 2016 - February 2020
Military Institute of Science and Technology
Field of study
  • Electrical, Electronic and Communication Engineering

Publications

Publications (31)
Conference Paper
This paper analyses how well a Fast Fully Convolu-tional Network (FastFCN) semantically segments satellite images and thus classifies Land Use/Land Cover(LULC) classes. Fast-FCN was used on Gaofen-2 Image Dataset (GID-2) to segment them in five different classes: BuiltUp, Meadow, Farmland, Water and Forest. The results showed better accuracy (0.93)...
Conference Paper
Computer vision coupled with Deep Learning (DL) techniques bring out a substantial prospect in the field of traffic control, monitoring and law enforcing activities. This paper presents a YOLOv4 object detection model in which the Convolutional Neural Network (CNN) is trained and tuned for detecting the license plate of the vehicles of Bangladesh a...
Preprint
The development of the Automatic License Plate Recognition (ALPR) system has received much attention for the English license plate. However, despite being the sixth largest population around the world, no significant progress can be tracked in the Bengali language countries or states for the ALPR system addressing their more alarming traffic manage...
Conference Paper
Breast cancer is the second most responsible for all cancer types and has been the cause of numerous deaths over the years, especially among women. Any improvisation of the existing diagnosis system for the detection of cancer can contribute to minimizing the death ratio. Moreover, cancer detection at an early stage has recently been a prime resear...
Article
Full-text available
Electricity production from photovoltaic (PV) systems has accelerated in the last few decades. Numerous environmental factors, particularly the buildup of dust on PV panels have resulted in a significant loss in PV energy output. To detect the dust and thus reduce power loss, several techniques are being researched, including thermal imaging, image...
Preprint
Full-text available
The widespread use of cloud-based medical devices and wearable sensors has made physiological data susceptible to tampering. These attacks can compromise the reliability of healthcare systems which can be critical and life-threatening. Detection of such data tampering is of immediate need. Machine learning has been used to detect anomalies in datas...
Article
Full-text available
Background Use of remote measurement of physiological parameters using digital biometrics (i.e., Electro Dermal Activities, heart rate, oxygen saturation, blood volume pulse, etc.) has a multitude of opportunities in rural contexts that have not yet fully been explored in Alzheimer’s disease (AD) clinical research. This study assessed feasibility a...
Preprint
Full-text available
Stress can increase the possibility of cognitive impairment and decrease the quality of life in older adults. Smart healthcare can deploy quantum machine learning to enable preventive and diagnostic support. This work introduces a unique technique to address stress detection as an anomaly detection problem that uses quantum hybrid support vector ma...
Preprint
Full-text available
Cyber-physical control systems are critical infrastructures designed around highly responsive feedback loops that are measured and manipulated by hundreds of sensors and controllers. Anomalous data, such as from cyber-attacks, greatly risk the safety of the infrastructure and human operators. With recent advances in the quantum computing paradigm,...
Article
Full-text available
Identifying stress in older adults is a crucial field of research in health and well-being. This allows us to take timely preventive measures that can help save lives. That is why a nonobtrusive way of accurate and precise stress detection is necessary. Researchers have proposed many statistical measurements to associate stress with sensor readings...
Article
Full-text available
Machine vision in low-light conditions is a critical requirement for object detection in road transportation, particularly for assisted and autonomous driving scenarios. Existing vision-based techniques are limited to daylight traffic scenarios due to their reliance on adequate lighting and high frame rates. This paper presents a novel approach to...
Conference Paper
Stress can aggravate age-related diseases that can lead to significant clinical impairment and decrease the quality of life in older adults. To mitigate the harmful effects of stress and aging, it is important to monitor and manage stress. In this paper, we have developed context-aware stress detection for older adults with machine learning and cor...
Preprint
The advancement of Image Processing has led to the widespread use of Object Recognition (OR) models in various applications, such as airport security and mail sorting. These models have become essential in signifying the capabilities of AI and supporting vital services like national postal operations. However, the performance of OR models can be im...
Article
Excessive stress can lead to poor physical and psychological outcomes thereby reducing quality of life and increasing health-related consequences. Context awareness refers to sources of information that can help technological applications be aware of human-environment interaction. Machine learning with context awareness is an emerging field with th...
Chapter
Full-text available
Vision-based deep learning models can be promising for speech-and-hearing-impaired and secret communications. While such non-verbal communications are primarily investigated with hand gestures and facial expressions, no research endeavour is tracked so far for the lips state (i.e., open/close)-based interpretation/translation system. In support of...
Article
Full-text available
The development of the Automatic License Plate Recognition (ALPR) system has received much attention for the English license plate. However, despite being the sixth-largest population around the world, no significant progress can be tracked in the Bengali language countries or states for the ALPR system addressing their more alarming traffic manage...
Conference Paper
Manual interpretation and classification of ECG signals lack both accuracy and reliability. These continuous time-series signals are more effective when represented as an image for CNN-based classification. A continuous Wavelet transform filter is used here to get corresponding images. In achieving the best result generic CNN architectures lack suf...
Preprint
Full-text available
Manual interpretation and classification of ECG signals lack both accuracy and reliability. These continuous time-series signals are more effective when represented as an image for CNN-based classification. A continuous Wavelet transform filter is used here to get corresponding images. In achieving the best result generic CNN architectures lack suf...
Preprint
Full-text available
Breast cancer is the second most responsible for all cancer types and has been the cause of numerous deaths over the years, especially among women. Any improvisation of the existing diagnosis system for the detection of cancer can contribute to minimizing the death ratio. Moreover, cancer detection at an early stage has recently been a prime resear...
Preprint
Full-text available
The development of the Automatic License Plate Recognition (ALPR) system has received much attention for the English license plate. However, despite being the sixth largest population around the world, no significant progress can be tracked in the Bengali language countries or states for the ALPR system addressing their more alarming traffic manage...
Conference Paper
Full-text available
Vision-based deep learning models can be promising for speech-and-hearing-impaired and secret communications. While such non-verbal communications are primarily investigated with hand-gestures and facial expressions, no research endeavour is tracked so far for the lips state (i.e., open/close)-based interpretation/translation system. In support of...
Conference Paper
Inappropriate placement of distributed generation (DG) can cause bus voltage profile deterioration and augmentation of active power loss due to high R/X ratio of the distribution lines. In this paper, a machine learning-based scheme is proposed for optimal positioning of DG units in the bus of a distribution network to lessen the active power losse...
Preprint
Full-text available
Computer vision coupled with Deep Learning (DL) techniques bring out a substantial prospect in the field of traffic control, monitoring and law enforcing activities. This paper presents a YOLOv4 object detection model in which the Convolutional Neural Network (CNN) is trained and tuned for detecting the license plate of the vehicles of Bangladesh a...
Preprint
Full-text available
This paper analyses how well a Fast Fully Convolu-tional Network (FastFCN) semantically segments satellite images and thus classifies Land Use/Land Cover(LULC) classes. Fast-FCN was used on Gaofen-2 Image Dataset (GID-2) to segment them in five different classes: BuiltUp, Meadow, Farmland, Water and Forest. The results showed better accuracy (0.93)...

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